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Libraries and software to analyse data (the MCP's picture and CsI signals) in the framework of the GBAR experiment

Project description

GBARpy manual

This library is made to work with python 3.

Table of Contents

Installation

Procedure for Unix and MacOS

  1. Install python 3
  2. Check if pip if install by entrering in the terminal
    python3 -m pip -V
    
    This command will give you the version of pip already installed. If not, install it
  3. Install GBARpy
    python3 -m pip install GBARpy
    
  4. Lauch GBARpy
    python3 -m GBARpy
    

If in the future, you need to update the version of GBARpy

python3 -m pip install --upgrade GBARpy

or to remove GBARpy

python3 -m pip uninstall GBARpy

Procedure for Windows

  1. Install python 3
  2. Check if pip if install by entrering in the command prompt
    py -m pip -V
    
    This command will give you the version of pip already installed. If not, install it
  3. Install GBARpy
    py -m pip install GBARpy
    
  4. Lauch GBARpy
    py -m GBARpy
    

If in the future, you need to update the version of GBARpy

py -m pip install --upgrade GBARpy

or to remove GBARpy

py -m pip uninstall GBARpy

Graphical User Interface

MCPpicture library

Basic code for an analysis

The examples corresponds to the python scripts MCP_example_basic.py and MCP_example_small_functions.py.

# Import the library
import GBARpy.MCPPicture as mcp
import matplotlib.pyplot as plt

Let's see how to import a beam spot picture (you can try with the file IMG0008.bmp):

# reshape analyse the beam spot
pic = mcp.BeamSpot("IMG0008.bmp",reshape=[1250,1000,600])
# the reshape array is a made of 3 elements: positionX, positionY, length (in pixel)
# if you don't want to reshape
pic = mcp.BeamSpot("IMG0008.bmp")

With this minimal code, the picture is analysed and the parameters of the fit can be obtained usign print(img). If it then possible to see and save the pictures as in the following example:

#plot the image
fig1 = plt.figure(figsize=(5,5))
plt.imshow(pic.img)
fig1.savefig("fig_example_1.pdf")

Example_1

Example_1

Even if it can be written manually, there are line codes to plot the intgrals along the x-axis and the y-axis:

#plot the fit
fig2 = plt.figure(figsize=(5,5))
pic.plot_X_int()
pic.plot_Y_int()
fig2.savefig("fig_example_2.pdf")

Example_2

Example_2

or to plot a summary of the fit:

#plot all
pic.plot("fig_example_3.pdf")

Example_3

Example_3

More examples

To import the required librairies for the following examples:

# Import the library
import GBARpy.MCPPicture as mcp
import matplotlib.pyplot as plt

For some reasons, you might desire to import the picture without analysing it:

### Import the Picture
img = mcp.import_image("IMG0008.bmp")
fig4 = plt.figure(figsize=(5,5))
plt.imshow(img)
fig4.savefig("fig_example_4.png")

Example_4

Example_4

### Import the Picture and reshape
img = mcp.import_image("IMG0008.bmp",reshape=[1250,1000,600])
fig5 = plt.figure(figsize=(5,5))
plt.imshow(img)
fig5.savefig("fig_example_5.png")

Example_5

Example_5

Once the pictures imported as a 2D array, it it possible to get the integrals along the x or y axis

### Integrals along the X and Y axis
Px,Ix = mcp.integrate_picture_along_X(img)
Py,Iy = mcp.integrate_picture_along_Y(img)
fig6 = plt.figure(figsize=(10,5))
plt.subplot(121)
plt.imshow(img)
plt.subplot(122)
plt.plot(Px,Ix)
plt.plot(Py,Iy)
fig6.savefig("fig_example_6.png")

Example_6

Example_6

and then, using the fit function defined in the library

### Fit of the integrals
poptX,perrX=mcp.fit_gaussian_offset_filtered(Px,Ix)
poptY,perrY=mcp.fit_gaussian_offset_filtered(Py,Iy)
fig7 = plt.figure(figsize=(5,5))
plt.plot(Px,Ix,'.',color='tab:red',ms=1)
plt.plot(Px,mcp.gaussian_offset(Px,*poptX),color='tab:red')
plt.plot(Py,Iy,'.',color='tab:blue',ms=1)
plt.plot(Py,mcp.gaussian_offset(Py,*poptY),color='tab:blue')
fig7.savefig("fig_example_7.png")

Example_7

Example_7

BeamSpot class

Attributes

  • BeamSpot.fname: string, file name of the picture
  • BeamSpot.img: 2D array, picture as an array
  • BeamSpot.pix: the pixels along the x axis
  • BeamSpot.piy: the pixels along the y axis
  • BeamSpot.Ix: array of floats, integral along the x axis
  • BeamSpot.Iy: array of floatt, integral along the y axis
  • BeamSpot.Ax: float, Amplitude, fit along the x axis
  • BeamSpot.Ay: float, Amplitude, fit along the y axis
  • BeamSpot.sigx: float, Sigma, fit along the x axis
  • BeamSpot.sigy: float, Sigma, fit along the x axis
  • BeamSpot.r0x: float, Center, fit along the x axis
  • BeamSpot.r0y: float, Center, fit along the x axis
  • BeamSpot.offsetx: float, offset, fit along the x axis
  • BeamSpot.offsety: float, offset, fit along the x axis
  • BeamSpot.poptx: array of floats, the parameters of the fit along the x-axis
  • BeamSpot.perrx: array of floats, errors on the parameters of the fit along the x-axis
  • BeamSpot.popty: array of floats, the parameters of the fit along the y-axis
  • BeamSpot.perry: array of floats, errors on the parameters of the fit along the y-axis
  • BeamSpot.reshape: array of int, the parameters to reshape, see help(import_image)

Methods

__init__(self,fname,reshape=[]): Constructor of the class

  • Parameters
    • fname: string, file name of the picture, the accepted file format ["tif","jpg","jpeg","png","asc","bmp"]
    • reshape: array of 3 integers (optional), to reshape the pictures (square): x,y,length
  • Example
    import GBARpy.MCPPicture as mcp
    bs = mcp.BeamSpot("name.tif")
    

__repr__(self): To represent the object as a string

  • Returns
    • a string variable
  • Example
    import GBARpy.MCPPicture as mcp
    bs = mcp.BeamSpot("name.tif")
    repr = bs.__repr__()
    #or to print it in the python console
    print(bs)
    

plot_Y_int(self,label=""): To plot the integral of the picture along the "y" axis

  • Parameters
    • label: (optional) a string
  • Example
    import GBARpy.MCPPicture as mcp
    bs = mcp.BeamSpot("name.tif")
    bs.plot_Y_int("Integral along the y-axis")
    

plot_X_int(self,label=""): To plot the integral of the picture along the "x" axis

  • Parameters
    • label: (optional) a string
  • Example
    import GBARpy.MCPPicture as mcp
    bs = mcp.BeamSpot("name.tif")
    bs.plot_X_int("Integral along the x-axis")
    

plot_X_int_revert(self): To plot the integral of the picture along the "x" axis and reverse the picture

  • Example
    import GBARpy.MCPPicture as mcp
    bs = mcp.BeamSpot("name.tif")
    bs.plot_X_int("Integral along the x-axis")
    

plot(self,fname="",figsize=(12,10),fontsize=12,ftsizeticks=12): To plot the picture and the analysis

  • Parameters
    • fname: string (optional), the name of the file to save the plot
    • figsize: tuple (size in inch X, Y) (optional), size of the figure
    • fontsize: int (optional), size of the font
    • ftsizeticks: int (optional), size of the ticks' font
  • Returns
    • fig: a matplotlib.pyplot.figure
  • Example
    import GBARpy.MCPPicture as mcp
    bs = mcp.BeamSpot("name.tif")
    fig = bs.plot("analysis.pdf")
    # or
    fig = bs.plot()
    fig.savefig("analysis.pdf")
    

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