X-Git-Url: https://bilbo.iut-bm.univ-fcomte.fr/and/gitweb/dmems12.git/blobdiff_plain/5bd43a57b7e5c885d77aac6dceea8cc19f2cfaea..015bc351b18995b7727145984fd39381bcce9a5a:/dmems12.tex?ds=inline

diff --git a/dmems12.tex b/dmems12.tex
index 423b0f7..94e96e4 100644
--- a/dmems12.tex
+++ b/dmems12.tex
@@ -1,5 +1,5 @@
 
-\documentclass[10pt, conference, compsocconf]{IEEEtran}
+\documentclass[10pt, peerreview, compsocconf]{IEEEtran}
 %\usepackage{latex8}
 %\usepackage{times}
 \usepackage[utf8]{inputenc}
@@ -26,7 +26,6 @@
 \newcommand{\tab}{\ \ \ }
 
 
-
 \begin{document}
 
 
@@ -58,7 +57,7 @@
 
 
 
-\maketitle
+%\maketitle
 
 \thispagestyle{empty}
 
@@ -66,23 +65,107 @@
 
   
 
-{\it keywords}: FPGA, cantilever, interferometry.
+
 \end{abstract}
 
+\begin{IEEEkeywords}
+FPGA, cantilever, interferometry.
+\end{IEEEkeywords}
+
+
+\IEEEpeerreviewmaketitle
+
 \section{Introduction}
 
-%% blabla +
+Cantilevers  are  used  inside  atomic  force  microscope (AFM) which  provides  high
+resolution images of  surfaces.  Several technics have been  used to measure the
+displacement  of cantilevers  in litterature.   For example,  it is  possible to
+determine  accurately  the  deflection  with different  mechanisms. 
+In~\cite{CantiPiezzo01},   authors  used   piezoresistor  integrated   into  the
+cantilever.   Nevertheless this  approach  suffers from  the  complexity of  the
+microfabrication  process needed  to  implement the  sensor  in the  cantilever.
+In~\cite{CantiCapacitive03},  authors  have  presented an  cantilever  mechanism
+based on  capacitive sensing. This kind  of technic also  involves to instrument
+the cantiliver which result in a complex fabrication process.
+
+In this  paper our attention is focused  on a method based  on interferometry to
+measure cantilevers' displacements.  In  this method cantilevers are illuminated
+by  an optic  source. The  interferometry produces  fringes on  each cantilevers
+which enables to  compute the cantilever displacement.  In  order to analyze the
+fringes a  high speed camera  is used. Images  need to be processed  quickly and
+then  a estimation  method is  required to  determine the  displacement  of each
+cantilever.  In~\cite{AFMCSEM11},  the authors have  used an algorithm  based on
+spline to estimate the cantilevers' positions.
+
+   The overall  process gives
+accurate results  but all the computation  are performed on  a standard computer
+using labview.  Consequently,  the main drawback of this  implementation is that
+the computer is a bootleneck in the overall process. In this paper we propose to
+use a  method based on least  square and to  implement all the computation  on a
+FGPA.
+
+The remainder  of the paper  is organized as  follows. Section~\ref{sec:measure}
+describes  more precisely  the measurement  process. Our  solution based  on the
+least  square   method  and   the  implementation  on   FPGA  is   presented  in
+Section~\ref{sec:solus}.       Experimentations      are       described      in
+Section~\ref{sec:results}.  Finally  a  conclusion  and  some  perspectives  are
+presented.
+
+
+
 %% quelques ref commentées sur les calculs basés sur l'interférométrie
 
 \section{Measurement principles}
 \label{sec:measure}
 
+
+
+
+
+
+
+
 \subsection{Architecture}
 \label{sec:archi}
 %% description de l'architecture générale de l'acquisition d'images
 %% avec au milieu une unité de traitement dont on ne précise pas ce
 %% qu'elle est.
 
+In order to develop simple,  cost effective and user-friendly cantilever arrays,
+authors   of    ~\cite{AFMCSEM11}   have   developped   a    system   based   of
+interferometry. In opposition to other optical based systems, using a laser beam
+deflection scheme and  sentitive to the angular displacement  of the cantilever,
+interferometry  is sensitive  to  the  optical path  difference  induced by  the
+vertical displacement of the cantilever.
+
+The system build  by authors of~\cite{AFMCSEM11} has been  developped based on a
+Linnick     interferomter~\cite{Sinclair:05}.    It     is     illustrated    in
+Figure~\ref{fig:AFM}.  A  laser diode  is first split  (by the splitter)  into a
+reference beam and a sample beam  that reachs the cantilever array.  In order to
+be  able to  move  the cantilever  array, it  is  mounted on  a translation  and
+rotational hexapod  stage with  five degrees of  freedom. The optical  system is
+also fixed to the stage.  Thus,  the cantilever array is centered in the optical
+system which  can be adjusted accurately.   The beam illuminates the  array by a
+microscope objective  and the  light reflects on  the cantilevers.  Likewise the
+reference beam  reflects on a  movable mirror.  A  CMOS camera chip  records the
+reference and  sample beams which  are recombined in  the beam splitter  and the
+interferogram.   At the  beginning of  each  experiment, the  movable mirror  is
+fitted  manually in  order to  align the  interferometric  fringes approximately
+parallel  to the cantilevers.   When cantilevers  move due  to the  surface, the
+bending of  cantilevers produce  movements in the  fringes that can  be detected
+with    the    CMOS    camera.     Finally    the    fringes    need    to    be
+analyzed. In~\cite{AFMCSEM11}, the authors used a LabView program to compute the
+cantilevers' movements from the fringes.
+
+\begin{figure}    
+\begin{center}
+\includegraphics[width=\columnwidth]{AFM}
+\end{center}
+\caption{schema of the AFM}
+\label{fig:AFM}   
+\end{figure}
+
+
 %% image tirée des expériences.
 
 \subsection{Cantilever deflection estimation}
@@ -104,7 +187,7 @@ the cantilevers. They are called base profile and tip profile in the
 following. Furthermore, a reference profile is taken on the base of
 the cantilever array.
 
-The pixels intensity $I$ (in gray level) of each profile is modelized by :
+The pixels intensity $I$ (in gray level) of each profile is modelized by:
 
 \begin{equation}
 \label{equ:profile}
@@ -119,45 +202,158 @@ on spline interpolation (see section \ref{algo-spline}). It also
 computes the coefficient used for unwrapping the phase. The second one
 is the acquisition loop, while which images are taken at regular time
 steps. For each image, the phase $\theta$ of all profiles is computed
-to obtain, after unwrapping, the deflection of cantilevers.
+to obtain, after unwrapping, the deflection of
+cantilevers. Originally, this computation was also done with an
+algorithm based on spline. This article proposes a new version based
+on a least square method.
 
 \subsection{Design goals}
 \label{sec:goals}
 
+The main goal is to implement a computing unit to estimate the
+deflection of about $10\times10$ cantilevers, faster than the stream of
+images coming from the camera. The accuracy of results must be close
+to the maximum precision ever obtained experimentally on the
+architecture, i.e. 0.3nm. Finally, the latency between an image
+entering in the unit and the deflections must be as small as possible
+(NB: future works plan to add some control on the cantilevers).\\
+
 If we put aside some hardware issues like the speed of the link
 between the camera and the computation unit, the time to deserialize
 pixels and to store them in memory, ... the phase computation is
 obviously the bottle-neck of the whole process. For example, if we
 consider the camera actually in use, an exposition time of 2.5ms for
-$1024\times 1204$ pixels seems the minimum that can be reached. For a
-$10\times 10$ cantilever array, if we neglect the time to extract
-pixels, it implies that computing the deflection of a single
+$1024\times 1204$ pixels seems the minimum that can be reached. For
+100 cantilevers, if we neglect the time to extract pixels, it implies
+that computing the deflection of a single
 cantilever should take less than 25$\mu$s, thus 12.5$\mu$s by phase.\\
 
 In fact, this timing is a very hard constraint. Let consider a very
 small programm that initializes twenty million of doubles in memory
 and then does 1000000 cumulated sums on 20 contiguous values
 (experimental profiles have about this size). On an intel Core 2 Duo
-E6650 at 2.33GHz, this program reaches an average of 155Mflops. It
-implies that the phase computation algorithm should not take more than
-$240\times 12.5 = 1937$ floating operations. For integers, it gives
-$3000$ operations.
-
-%% to be continued ...
-
-%% � faire : timing de l'algo spline en C avec atan et tout le bordel.
-
-
+E6650 at 2.33GHz, this program reaches an average of 155Mflops. 
+
+%%Itimplies that the phase computation algorithm should not take more than
+%%$155\times 12.5 = 1937$ floating operations. For integers, it gives $3000$ operations. 
+
+Obviously, some cache effects and optimizations on
+huge amount of computations can drastically increase these
+performances: peak efficiency is about 2.5Gflops for the considered
+CPU. But this is not the case for phase computation that used only few
+tenth of values.\\
+
+In order to evaluate the original algorithm, we translated it in C
+language. As said further, for 20 pixels, it does about 1550
+operations, thus an estimated execution time of $1550/155
+=$10$\mu$s. For a more realistic evaluation, we constructed a file of
+1Mo containing 200 profiles of 20 pixels, equally scattered. This file
+is equivalent to an image stored in a device file representing the
+camera. We obtained an average of 10.5$\mu$s by profile (including I/O
+accesses). It is under are requirements but close to the limit. In
+case of an occasional load of the system, it could be largely
+overtaken. A solution would be to use a real-time operating system but
+another one to search for a more efficient algorithm.
+
+But the main drawback is the latency of such a solution: since each
+profile must be treated one after another, the deflection of 100
+cantilevers takes about $200\times 10.5 = 2.1$ms, which is inadequate
+for an efficient control. An obvious solution is to parallelize the
+computations, for example on a GPU. Nevertheless, the cost to transfer
+profile in GPU memory and to take back results would be prohibitive
+compared to computation time. It is certainly more efficient to
+pipeline the computation. For example, supposing that 200 profiles of
+20 pixels can be pushed sequentially in the pipelined unit cadenced at
+a 100MHz (i.e. a pixel enters in the unit each 10ns), all profiles
+would be treated in $200\times 20\times 10.10^{-9} =$ 40$\mu$s plus
+the latency of the pipeline. This is about 500 times faster than
+actual results.\\
+
+For these reasons, an FPGA as the computation unit is the best choice
+to achieve the required performance. Nevertheless, passing from
+a C code to a pipelined version in VHDL is not obvious at all. As
+explained in the next section, it can even be impossible because of
+some hardware constraints specific to FPGAs.
 
 
 \section{Proposed solution}
 \label{sec:solus}
 
-
-\subsection{FPGA constraints}
-
-%% contraintes imposées par le FPGA : algo pipeline/parallele, pas d'op math complexe, ...
-
+Project Oscar aims  to provide a hardware and  software architecture to estimate
+and  control the  deflection of  cantilevers. The  hardware part  consists  in a
+high-speed camera,  linked on an embedded  board hosting FPGAs. By  the way, the
+camera output stream can be pushed  directly into the FPGA. The software part is
+mostly the VHDL  code that deserializes the camera  stream, extracts profile and
+computes  the deflection. Before  focusing on  our work  to implement  the phase
+computation, we give some general information about FPGAs and the board we use.
+
+\subsection{FPGAs}
+
+A field-programmable gate array (FPGA) is an integrated circuit
+designed to be configured by the customer. FGPAs are composed of
+programmable logic components, called configurable logic blocks
+(CLB). These blocks mainly contains look-up tables (LUT), flip/flops
+(F/F) and latches, organized in one or more slices connected
+together. Each CLB can be configured to perform simple (AND, XOR, ...)
+or complex combinational functions. They are interconnected by
+reconfigurable links. Modern FPGAs contain memory elements and
+multipliers which enable to simplify the design and to increase the
+performance. Nevertheless, all other complex operations, like
+division, trigonometric functions, $\ldots$ are not available and must
+be done by configuring a set of CLBs. Since this configuration is not
+obvious at all, it can be done via a framework, like ISE. Such a
+software can synthetize a design written in a hardware description
+language (HDL), map it onto CLBs, place/route them for a specific
+FPGA, and finally produce a bitstream that is used to configre the
+FPGA. Thus, from the developper point of view, the main difficulty is
+to translate an algorithm in HDL code, taking account FPGA resources
+and constraints like clock signals and I/O values that drive the FPGA.
+
+Indeed, HDL programming is very different from classic languages like
+C. A program can be seen as a state-machine, manipulating signals that
+evolve from state to state. By the way, HDL instructions can execute
+concurrently. Basic logic operations are used to agregate signals to
+produce new states and assign it to another signal. States are mainly
+expressed as arrays of bits. Fortunaltely, libraries propose some
+higher levels representations like signed integers, and arithmetic
+operations.
+
+Furthermore, even if FPGAs are cadenced more slowly than classic
+processors, they can perform pipeline as well as parallel
+operations. A pipeline consists in cutting a process in sequence of
+small tasks, taking the same execution time. It accepts a new data at
+each clock top, thus, after a known latency, it also provides a result
+at each clock top. However, using a pipeline consumes more logics
+since the components of a task are not reusable by another
+one. Nevertheless it is probably the most efficient technique on
+FPGA. Because of its architecture, it is also very easy to process
+several data concurrently. When it is possible, the best performance
+is reached using parallelism to handle simultaneously several
+pipelines in order to handle multiple data streams.
+
+\subsection{The board}
+
+The board we use is designed by the Armadeus compagny, under the name
+SP Vision. It consists in a development board hosting a i.MX27 ARM
+processor (from Freescale). The board includes all classical
+connectors: USB, Ethernet, ... A Flash memory contains a Linux kernel
+that can be launched after booting the board via u-Boot.
+
+The processor is directly connected to a Spartan3A FPGA (from Xilinx)
+via its special interface called WEIM. The Spartan3A is itself
+connected to a Spartan6 FPGA. Thus, it is possible to develop programs
+that communicate between i.MX and Spartan6, using Spartan3 as a
+tunnel. By default, the WEIM interface provides a clock signal at
+100MHz that is connected to dedicated FPGA pins.
+
+The Spartan6 is an LX100 version. It has 15822 slices, equivalent to
+101261 logic cells. There are 268 internal block RAM of 18Kbits, and
+180 dedicated multiply-adders (named DSP48), which is largely enough
+for our project.
+
+Some I/O pins of Spartan6 are connected to two $2\times 17$ headers
+that can be used as user wants. For the project, they will be
+connected to the interface card of the camera.
 
 \subsection{Considered algorithms}
 
@@ -174,35 +370,38 @@ Let consider a profile $P$, that is a segment of $M$ pixels with an
 intensity in gray levels. Let call $I(x)$ the intensity of profile in $x
 \in [0,M[$. 
 
-At first, only $M$ values of $I$ are known, for $x = 0, 1,
-\ldots,M-1$. A normalisation allows to scale known intensities into
-$[-1,1]$. We compute splines that fit at best these normalised
-intensities. Splines are used to interpolate $N = k\times M$ points
-(typically $k=3$ is sufficient), within $[0,M[$. Let call $x^s$ the
-coordinates of these $N$ points and $I^s$ their intensities.
+At  first, only $M$  values of  $I$ are  known, for  $x =  0, 1,  \ldots,M-1$. A
+normalisation  allows  to scale  known  intensities  into  $[-1,1]$. We  compute
+splines  that fit  at best  these normalised  intensities. Splines  (SPL  in the
+following) are  used to interpolate $N  = k\times M$ points  (typically $k=4$ is
+sufficient), within $[0,M[$. Let call  $x^s$ the coordinates of these $N$ points
+    and $I^s$ their intensities.
 
 In order to have the frequency, the mean line $a.x+b$ (see equation \ref{equ:profile}) of $I^s$ is
 computed. Finding intersections of $I^s$ and this line allow to obtain
 the period thus the frequency.
 
-The phase is computed via the equation :
+The phase is computed via the equation:
 \begin{equation}
 \theta = atan \left[ \frac{\sum_{i=0}^{N-1} sin(2\pi f x^s_i) \times I^s(x^s_i)}{\sum_{i=0}^{N-1} cos(2\pi f x^s_i) \times I^s(x^s_i)} \right]
 \end{equation}
 
-Two things can be noticed. Firstly, the frequency could also be
-obtained using the derivates of spline equations, which only implies
-to solve quadratic equations. Secondly, frequency of each profile is
-computed a single time, before the acquisition loop. Thus, $sin(2\pi f
-x^s_i)$ and $cos(2\pi f x^s_i)$ could also be computed before the loop, which leads to a
-much faster computation of $\theta$.
+Two things can be noticed:
+\begin{itemize}
+\item the frequency could also be obtained using the derivates of
+  spline equations, which only implies to solve quadratic equations.
+\item frequency of each profile is computed a single time, before the
+  acquisition loop. Thus, $sin(2\pi f x^s_i)$ and $cos(2\pi f x^s_i)$
+  could also be computed before the loop, which leads to a much faster
+  computation of $\theta$.
+\end{itemize}
 
 \subsubsection{Least square algorithm}
 
 Assuming that we compute the phase during the acquisition loop,
-equation \ref{equ:profile} has only 4 parameters :$a, b, A$, and
+equation \ref{equ:profile} has only 4 parameters: $a, b, A$, and
 $\theta$, $f$ and $x$ being already known. Since $I$ is non-linear, a
-least square method based an Gauss-newton algorithm must be used to
+least square method based on a Gauss-newton algorithm can be used to
 determine these four parameters. Since it is an iterative process
 ending with a convergence criterion, it is obvious that it is not
 particularly adapted to our design goals.
@@ -210,16 +409,16 @@ particularly adapted to our design goals.
 Fortunatly, it is quite simple to reduce the number of parameters to
 only $\theta$. Let $x^p$ be the coordinates of pixels in a segment of
 size $M$. Thus, $x^p = 0, 1, \ldots, M-1$. Let $I(x^p)$ be their
-intensity. Firstly, we "remove" the slope by computing :
+intensity. Firstly, we "remove" the slope by computing:
 
 \[I^{corr}(x^p) = I(x^p) - a.x^p - b\]
 
 Since linear equation coefficients are searched, a classical least
-square method can be used to determine $a$ and $b$ :
+square method can be used to determine $a$ and $b$:
 
 \[a = \frac{covar(x^p,I(x^p))}{var(x^p)} \]
 
-Assuming an overlined symbol means an average, then :
+Assuming an overlined symbol means an average, then:
 
 \[b = \overline{I(x^p)} - a.\overline{{x^p}}\]
 
@@ -227,22 +426,22 @@ Let $A$ be the amplitude of $I^{corr}$, i.e.
 
 \[A = \frac{max(I^{corr}) - min(I^{corr})}{2}\]
 
-Then, the least square method to find $\theta$ is reduced to search the minimum of :
+Then, the least square method to find $\theta$ is reduced to search the minimum of:
 
 \[\sum_{i=0}^{M-1} \left[ cos(2\pi f.i + \theta) - \frac{I^{corr}(i)}{A} \right]^2\]
 
-It is equivalent to derivate this expression and to solve the following equation :
+It is equivalent to derivate this expression and to solve the following equation:
 
 \begin{eqnarray*}
 2\left[ cos\theta \sum_{i=0}^{M-1} I^{corr}(i).sin(2\pi f.i) + sin\theta \sum_{i=0}^{M-1} I^{corr}(i).cos(2\pi f.i)\right] \\
 - A\left[ cos2\theta \sum_{i=0}^{M-1} sin(4\pi f.i) + sin2\theta \sum_{i=0}^{M-1} cos(4\pi f.i)\right]   = 0
 \end{eqnarray*}
 
-Several points can be noticed :
+Several points can be noticed:
 \begin{itemize}
 \item As in the spline method, some parts of this equation can be
   computed before the acquisition loop. It is the case of sums that do
-  not depend on $\theta$ :
+  not depend on $\theta$:
 
 \[ \sum_{i=0}^{M-1} sin(4\pi f.i), \sum_{i=0}^{M-1} cos(4\pi f.i) \] 
 
@@ -250,17 +449,19 @@ Several points can be noticed :
 computed.
 
 \item The simplest method to find the good $\theta$ is to discretize
-  $[-\pi,\pi]$ in $N$ steps, and to search which step leads to the
+  $[-\pi,\pi]$ in $nb_s$ steps, and to search which step leads to the
   result closest to zero. By the way, three other lookup tables can
-  also be computed before the loop :
+  also be computed before the loop:
+
+\[ sin \theta, cos \theta, \]
 
-\[ sin \theta, cos \theta, \left[ cos 2\theta \sum_{i=0}^{M-1} sin(4\pi f.i) + sin 2\theta \sum_{i=0}^{M-1} cos(4\pi f.i)\right] \]
+\[ \left[ cos 2\theta \sum_{i=0}^{M-1} sin(4\pi f.i) + sin 2\theta \sum_{i=0}^{M-1} cos(4\pi f.i)\right] \]
 
-\item This search can be very fast using a dichotomous process in $log_2(N)$ 
+\item This search can be very fast using a dichotomous process in $log_2(nb_s)$ 
 
 \end{itemize}
 
-Finally, the whole summarizes in an algorithm (called LSQ in the following) in two parts, one before and one during the acquisition loop :
+Finally, the whole summarizes in an algorithm (called LSQ in the following) in two parts, one before and one during the acquisition loop:
 \begin{algorithm}[h]
 \caption{LSQ algorithm - before acquisition loop.}
 \label{alg:lsq-before}
@@ -274,15 +475,15 @@ Finally, the whole summarizes in an algorithm (called LSQ in the following) in t
 
    \For{$i=0$ to $nb_s $}{
      $\theta  \leftarrow -\pi + 2\pi\times \frac{i}{nb_s}$\\
-     lut\_sin[$i$] $\leftarrow sin \theta$\\
-     lut\_cos[$i$] $\leftarrow cos \theta$\\
-     lut\_A[$i$] $\leftarrow cos 2 \theta \times s4i + sin 2 \theta \times c4i$\\
-     lut\_sinfi[$i$] $\leftarrow sin (2\pi f.i)$\\
-     lut\_cosfi[$i$] $\leftarrow cos (2\pi f.i)$\\
+     lut$_s$[$i$] $\leftarrow sin \theta$\\
+     lut$_c$[$i$] $\leftarrow cos \theta$\\
+     lut$_A$[$i$] $\leftarrow cos 2 \theta \times s4i + sin 2 \theta \times c4i$\\
+     lut$_{sfi}$[$i$] $\leftarrow sin (2\pi f.i)$\\
+     lut$_{cfi}$[$i$] $\leftarrow cos (2\pi f.i)$\\
    }
 \end{algorithm}
 
-\begin{algorithm}[h]
+\begin{algorithm}[ht]
 \caption{LSQ algorithm - during acquisition loop.}
 \label{alg:lsq-during}
 
@@ -299,7 +500,7 @@ Finally, the whole summarizes in an algorithm (called LSQ in the following) in t
    $slope \leftarrow \frac{xy_{covar}}{x_{var}}$\\
    $start \leftarrow y_{moy} - slope\times \bar{x}$\\
    \For{$i=0$ to $M-1$}{
-     $I[i] \leftarrow I[i] - start - slope\times i$\tcc*[f]{slope removal}\\
+     $I[i] \leftarrow I[i] - start - slope\times i$\\
    }
    
    $I_{max} \leftarrow max_i(I[i])$, $I_{min} \leftarrow min_i(I[i])$\\
@@ -307,32 +508,232 @@ Finally, the whole summarizes in an algorithm (called LSQ in the following) in t
 
    $Is \leftarrow 0$, $Ic \leftarrow 0$\\
    \For{$i=0$ to $M-1$}{
-     $Is \leftarrow Is + I[i]\times $ lut\_sinfi[$i$]\\
-     $Ic \leftarrow Ic + I[i]\times $ lut\_cosfi[$i$]\\
+     $Is \leftarrow Is + I[i]\times $ lut$_{sfi}$[$i$]\\
+     $Ic \leftarrow Ic + I[i]\times $ lut$_{cfi}$[$i$]\\
    }
 
-   $\theta \leftarrow -\pi$\\
-   $val_1 \leftarrow 2\times \left[ Is.\cos(\theta) + Ic.\sin(\theta) \right] - amp\times \left[ c4i.\sin(2\theta) + s4i.\cos(2\theta) \right]$\\
-   \For{$i=1-n_s$ to $n_s$}{
-     $\theta \leftarrow \frac{i.\pi}{n_s}$\\
-     $val_2 \leftarrow 2\times \left[ Is.\cos(\theta) + Ic.\sin(\theta) \right] - amp\times \left[ c4i.\sin(2\theta) + s4i.\cos(2\theta) \right]$\\
+   $\delta \leftarrow \frac{nb_s}{2}$, $b_l \leftarrow 0$, $b_r \leftarrow \delta$\\
+   $v_l \leftarrow -2.I_s - amp.$lut$_A$[$b_l$]\\
+
+   \While{$\delta >= 1$}{
 
-     \lIf{$val_1 < 0$ et $val_2 >= 0$}{
-       $\theta_s \leftarrow \theta - \left[ \frac{val_2}{val_2-val_1}\times \frac{\pi}{n_s} \right]$\\
+     $v_r \leftarrow 2.[ Is.$lut$_c$[$b_r$]$ + Ic.$lut$_s$[$b_r$]$ ] - amp.$lut$_A$[$b_r$]\\
+
+     \If{$!(v_l < 0$ and $v_r >= 0)$}{
+       $v_l \leftarrow v_r$ \\
+       $b_l \leftarrow b_r$ \\
      }
-     $val_1 \leftarrow val_2$\\
+     $\delta \leftarrow \frac{\delta}{2}$\\
+     $b_r \leftarrow b_l + \delta$\\
+   }
+   \uIf{$!(v_l < 0$ and $v_r >= 0)$}{
+     $v_l \leftarrow v_r$ \\
+     $b_l \leftarrow b_r$ \\
+     $b_r \leftarrow b_l + 1$\\
+     $v_r \leftarrow 2.[ Is.$lut$_c$[$b_r$]$ + Ic.$lut$_s$[$b_r$]$ ] - amp.$lut$_A$[$b_r$]\\
+   }
+   \Else {
+     $b_r \leftarrow b_l + 1$\\
    }
 
-\end{algorithm}
+   \uIf{$ abs(v_l) < v_r$}{
+     $b_{\theta} \leftarrow b_l$ \\
+   }
+   \Else {
+     $b_{\theta} \leftarrow b_r$ \\
+   }
+   $\theta \leftarrow \pi\times \left[\frac{2.b_{ref}}{nb_s}-1\right]$\\
 
+\end{algorithm}
 
 \subsubsection{Comparison}
 
-\subsection{VDHL design paradigms}
+We compared the two algorithms on the base of three criteria:
+\begin{itemize}
+\item precision of results on a cosinus profile, distorted with noise,
+\item number of operations,
+\item complexity to implement an FPGA version.
+\end{itemize}
 
-\subsection{VDHL implementation}
+For the first item, we produced a matlab version of each algorithm,
+running with double precision values. The profile was generated for
+about 34000 different values of period ($\in [3.1, 6.1]$, step = 0.1),
+phase ($\in [-3.1 , 3.1]$, step = 0.062) and slope ($\in [-2 , 2]$,
+step = 0.4). For LSQ, $nb_s = 1024$, which leads to a maximal error of
+$\frac{\pi}{1024}$ on phase computation. Current A. Meister and
+M. Favre experiments show a ratio of 50 between variation of phase and
+the deflection of a lever. Thus, the maximal error due to
+discretization correspond to an error of 0.15nm on the lever
+deflection, which is smaller than the best precision they achieved,
+i.e. 0.3nm.
+
+For each test, we add some noise to the profile: each group of two
+pixels has its intensity added to a random number picked in $[-N,N]$
+(NB: it should be noticed that picking a new value for each pixel does
+not distort enough the profile). The absolute error on the result is
+evaluated by comparing the difference between the reference and
+computed phase, out of $2\pi$, expressed in percents. That is: $err =
+100\times \frac{|\theta_{ref} - \theta_{comp}|}{2\pi}$.
+
+Table \ref{tab:algo_prec} gives the maximum and average error for the two algorithms and increasing values of $N$.
+
+\begin{table}[ht]
+  \begin{center}
+    \begin{tabular}{|c|c|c|c|c|}
+      \hline
+  & \multicolumn{2}{c|}{SPL} & \multicolumn{2}{c|}{LSQ} \\ \cline{2-5}
+  noise & max. err. & aver. err. & max. err. & aver. err. \\ \hline
+  0 & 2.46 & 0.58 & 0.49 & 0.1 \\ \hline
+  2.5 & 2.75 & 0.62 & 1.16 & 0.22 \\ \hline
+  5 & 3.77 & 0.72 & 2.47 & 0.41 \\ \hline
+  7.5 & 4.72 & 0.86 & 3.33 & 0.62 \\ \hline
+  10 & 5.62 & 1.03 & 4.29 & 0.81 \\ \hline
+  15 & 7.96 & 1.38 & 6.35 & 1.21 \\ \hline
+  30 & 17.06 & 2.6 & 13.94 & 2.45 \\ \hline
+
+\end{tabular}
+\caption{Error (in \%) for cosinus profiles, with noise.}
+\label{tab:algo_prec}
+\end{center}
+\end{table}
+
+These results show that the two algorithms are very close, with a
+slight advantage for LSQ. Furthemore, both behave very well against
+noise. Assuming the experimental ratio of 50 (see above), an error of
+1 percent on phase correspond to an error of 0.5nm on the lever
+deflection, which is very close to the best precision.
+
+Obviously, it is very hard to predict which level of noise will be
+present in real experiments and how it will distort the
+profiles. Nevertheless, we can see on figure \ref{fig:noise20} the
+profile with $N=10$ that leads to the biggest error. It is a bit
+distorted, with pikes and straight/rounded portions, and relatively
+close to most of that come from experiments. Figure \ref{fig:noise60}
+shows a sample of worst profile for $N=30$. It is completly distorted,
+largely beyond the worst experimental ones. 
+
+\begin{figure}[ht]
+\begin{center}
+  \includegraphics[width=\columnwidth]{intens-noise20}
+\end{center}
+\caption{Sample of worst profile for N=10}
+\label{fig:noise20}
+\end{figure}
+
+\begin{figure}[ht]
+\begin{center}
+  \includegraphics[width=\columnwidth]{intens-noise60}
+\end{center}
+\caption{Sample of worst profile for N=30}
+\label{fig:noise60}
+\end{figure}
+
+The second criterion is relatively easy to estimate for LSQ and harder
+for SPL because of $atan$ operation. In both cases, it is proportional
+to numbers of pixels $M$. For LSQ, it also depends on $nb_s$ and for
+SPL on $N = k\times M$, i.e. the number of interpolated points. 
+
+We assume that $M=20$, $nb_s=1024$, $k=4$, all possible parts are
+already in lookup tables and a limited set of operations (+, -, *, /,
+$<$, $>$) is taken account. Translating the two algorithms in C code, we
+obtain about 430 operations for LSQ and 1550 (plus few tenth for
+$atan$) for SPL. This result is largely in favor of LSQ. Nevertheless,
+considering the total number of operations is not really pertinent for
+an FPGA implementation: it mainly depends on the type of operations
+and their
+ordering. The final decision is thus driven by the third criterion.\\
+
+The Spartan 6 used in our architecture has a hard constraint: it has no built-in
+floating  point  units.   Obviously,  it  is  possible  to   use  some  existing
+"black-boxes"  for double  precision  operations.  But they  have  a quite  long
+latency. It is much simpler to  exclusively use integers, with a quantization of
+all double  precision values. Obviously,  this quantization should  not decrease
+too much the  precision of results. Furthermore, it should not  lead to a design
+with  a huge  latency because  of operations  that could  not complete  during a
+single or few clock cycles. Divisions  are in this case and, moreover, they need
+a varying  number of  clock cycles  to complete. Even  multiplications can  be a
+problem:  DSP48 take  inputs of  18  bits maximum.  For larger  multiplications,
+several DSP must be combined, increasing the latency.
+
+Nevertheless, the hardest constraint does not come from the FPGA characteristics
+but from the algorithms. Their VHDL  implentation will be efficient only if they
+can be fully (or near) pipelined. By the way, the choice is quickly done: only a
+small  part of  SPL  can be.   Indeed,  the computation  of spline  coefficients
+implies to solve  a tridiagonal system $A.m =  b$. Values in $A$ and  $b$ can be
+computed from  incoming pixels intensity  but after, the back-solve  starts with
+the  lastest  values,  which  breaks  the  pipeline.  Moreover,  SPL  relies  on
+interpolating far more points than profile size. Thus, the end of SPL works on a
+larger amount of data than the beginning, which also breaks the pipeline.
+
+LSQ has  not this problem: all parts  except the dichotomial search  work on the
+same  amount  of  data, i.e.  the  profile  size.  Furthermore, LSQ  needs  less
+operations than SPL, implying a  smaller output latency. Consequently, it is the
+best candidate for phase  computation. Nevertheless, obtaining a fully pipelined
+version supposes that  operations of different parts complete  in a single clock
+cycle. It is  the case for simulations but it completely  fails when mapping and
+routing the design  on the Spartan6. By the way,  extra-latency is generated and
+there must be idle times between two profiles entering into the pipeline.
+
+%%Before obtaining the least bitstream, the crucial question is: how to
+%%translate the C code the LSQ into VHDL ?
+
+
+%\subsection{VHDL design paradigms}
+
+\section{Experimental tests}
+
+In this section we explain what  we have done yet. Until now, we could not perform
+real experiments  since we just have  received the FGPA  board. Nevertheless, we
+will include real experiments in the final version of this paper.
+
+\subsection{VHDL implementation}
+
+
+
+% - ecriture d'un code en C avec integer
+% - calcul de la taille max en bit de chaque variable en fonction de la quantization.
+% - tests de quantization : équilibre entre précision et contraintes FPGA
+% - en parallèle : simulink et VHDL à la main
+
+
+From the  LSQ algorithm,  we have written  a C  program which uses  only integer
+values  that have  been  previously  scaled. The  quantization  of doubles  into
+integers has  been performed  in order  to obtain a  good trade-off  between the
+number of bits  used and the precision. Finally, we have  compared the result of
+the LSQ version  using integer and double. We have observed  that the results of
+both versions were similar.
+
+Then we have built  two versions of VHDL codes: one directly  by hand coding and
+the other with Matlab using simulink HDL coder feature. Although the approach is
+completely different we  have obtain VHDL codes that  are quite comparable. Each
+approach has  advantages and drawbacks.  Roughly speaking,  hand coding provides
+beautiful and much better structures  code while HDL coder provides code faster.
+In  terms  of speed  of  code,  we think  that  both  approaches  will be  quite
+comparable. Real experiments  will confirm that.  In the  LSQ algorithm, we have
+replaced all the divisions by  multiplications by a constant since divisions are
+performed  with  constants depending  of  the number  of  pixels  in the  profile
+(i.e. $M$).
+
+\subsection{Simulation}
+
+Currently, we only have simulated our VHDL codes with GHDL and GTKWave (two free
+tools with linux). Both approaches led to correct results. At the beginning with
+simulations our pipiline could compute a new phase each 33 cycles and the length
+of the pipeline was  equal to 95 cycles. When we tried  to generate the bitsream
+with ISE environment we had many problems because many stages required more than
+the 10$n$s availabe. So we needed to  decompose some part of the pipeline in order
+to add some cycles and siplify some parts.
+% ghdl + gtkwave
+% au mieux : une phase tous les 33 cycles, latence de 95 cycles.
+% mais routage/placement impossible.
+\subsection{Bitstream creation}
+
+Currently both  approaches provide synthesable  bitstreams with ISE.   We expect
+that the  pipeline will  have a latency  of 112  cycles, i.e. 1.12$\mu$s  and it
+could accept new line of pixel each 48 cycles, i.e. 480$n$s.
+
+% pas fait mais prévision d'une sortie tous les 480ns avec une latence de 1120
 
-\section{Experimental results}
 \label{sec:results}