
.. DO NOT EDIT.
.. THIS FILE WAS AUTOMATICALLY GENERATED BY SPHINX-GALLERY.
.. TO MAKE CHANGES, EDIT THE SOURCE PYTHON FILE:
.. "auto_examples/image_processing/plot_downsize_image.py"
.. LINE NUMBERS ARE GIVEN BELOW.

.. only:: html

    .. note::
        :class: sphx-glr-download-link-note

        Click :ref:`here <sphx_glr_download_auto_examples_image_processing_plot_downsize_image.py>`
        to download the full example code

.. rst-class:: sphx-glr-example-title

.. _sphx_glr_auto_examples_image_processing_plot_downsize_image.py:


================================
Downsize MRI image using pydicom
================================

This example shows how to downsize an MR image from :math:`512  imes 512` to
:math:`64       imes 64`. The downsizing is performed by taking the central section
instead of averagin the pixels. Finally, the image is store as a dicom image.

.. note::

   This example requires the Numpy library to manipulate the pixel data.

.. GENERATED FROM PYTHON SOURCE LINES 15-44




.. rst-class:: sphx-glr-script-out

 Out:

 .. code-block:: none


    The image has 64 x 64 voxels
    The downsampled image has 8 x 8 voxels
    The information of the data set after downsampling: 

    Dataset.file_meta -------------------------------
    (0002, 0000) File Meta Information Group Length  UL: 190
    (0002, 0001) File Meta Information Version       OB: b'\x00\x01'
    (0002, 0002) Media Storage SOP Class UID         UI: MR Image Storage
    (0002, 0003) Media Storage SOP Instance UID      UI: 1.3.6.1.4.1.5962.1.1.4.1.1.20040826185059.5457
    (0002, 0010) Transfer Syntax UID                 UI: Explicit VR Little Endian
    (0002, 0012) Implementation Class UID            UI: 1.3.6.1.4.1.5962.2
    (0002, 0013) Implementation Version Name         SH: 'DCTOOL100'
    (0002, 0016) Source Application Entity Title     AE: 'CLUNIE1'
    -------------------------------------------------
    (0008, 0008) Image Type                          CS: ['DERIVED', 'SECONDARY', 'OTHER']
    (0008, 0012) Instance Creation Date              DA: '20040826'
    (0008, 0013) Instance Creation Time              TM: '185434'
    (0008, 0014) Instance Creator UID                UI: 1.3.6.1.4.1.5962.3
    (0008, 0016) SOP Class UID                       UI: MR Image Storage
    (0008, 0018) SOP Instance UID                    UI: 1.3.6.1.4.1.5962.1.1.4.1.1.20040826185059.5457
    (0008, 0020) Study Date                          DA: '20040826'
    (0008, 0021) Series Date                         DA: ''
    (0008, 0022) Acquisition Date                    DA: ''
    (0008, 0030) Study Time                          TM: '185059'
    (0008, 0031) Series Time                         TM: ''
    (0008, 0032) Acquisition Time                    TM: ''
    (0008, 0050) Accession Number                    SH: ''
    (0008, 0060) Modality                            CS: 'MR'
    (0008, 0070) Manufacturer                        LO: 'TOSHIBA_MEC'
    (0008, 0080) Institution Name                    LO: 'TOSHIBA'
    (0008, 0090) Referring Physician's Name          PN: ''
    (0008, 0201) Timezone Offset From UTC            SH: '-0400'
    (0008, 1010) Station Name                        SH: '000000000'
    (0008, 1060) Name of Physician(s) Reading Study  PN: '----'
    (0008, 1070) Operators' Name                     PN: '----'
    (0008, 1090) Manufacturer's Model Name           LO: 'MRT50H1'
    (0010, 0010) Patient's Name                      PN: 'CompressedSamples^MR1'
    (0010, 0020) Patient ID                          LO: '4MR1'
    (0010, 0030) Patient's Birth Date                DA: ''
    (0010, 0040) Patient's Sex                       CS: 'F'
    (0010, 1020) Patient's Size                      DS: None
    (0010, 1030) Patient's Weight                    DS: '80.0'
    (0018, 0010) Contrast/Bolus Agent                LO: ''
    (0018, 0020) Scanning Sequence                   CS: 'SE'
    (0018, 0021) Sequence Variant                    CS: 'NONE'
    (0018, 0022) Scan Options                        CS: ''
    (0018, 0023) MR Acquisition Type                 CS: '3D'
    (0018, 0050) Slice Thickness                     DS: '0.8'
    (0018, 0080) Repetition Time                     DS: '4000.0'
    (0018, 0081) Echo Time                           DS: '240.0'
    (0018, 0083) Number of Averages                  DS: '1.0'
    (0018, 0084) Imaging Frequency                   DS: '63.924339'
    (0018, 0085) Imaged Nucleus                      SH: 'H'
    (0018, 0086) Echo Number(s)                      IS: '1'
    (0018, 0091) Echo Train Length                   IS: None
    (0018, 1000) Device Serial Number                LO: '-0000200'
    (0018, 1020) Software Versions                   LO: 'V3.51*P25'
    (0018, 1314) Flip Angle                          DS: '90.0'
    (0018, 5100) Patient Position                    CS: 'HFS'
    (0020, 000d) Study Instance UID                  UI: 1.3.6.1.4.1.5962.1.2.4.20040826185059.5457
    (0020, 000e) Series Instance UID                 UI: 1.3.6.1.4.1.5962.1.3.4.1.20040826185059.5457
    (0020, 0010) Study ID                            SH: '4MR1'
    (0020, 0011) Series Number                       IS: '1'
    (0020, 0012) Acquisition Number                  IS: '0'
    (0020, 0013) Instance Number                     IS: '1'
    (0020, 0032) Image Position (Patient)            DS: [-83.9063, -91.2000, 6.6406]
    (0020, 0037) Image Orientation (Patient)         DS: [1.0000, 0.0000, 0.0000, 0.0000, 1.0000, 0.0000]
    (0020, 0052) Frame of Reference UID              UI: 1.3.6.1.4.1.5962.1.4.4.1.20040826185059.5457
    (0020, 0060) Laterality                          CS: ''
    (0020, 1040) Position Reference Indicator        LO: ''
    (0020, 1041) Slice Location                      DS: '0.0'
    (0020, 4000) Image Comments                      LT: 'Uncompressed'
    (0028, 0002) Samples per Pixel                   US: 1
    (0028, 0004) Photometric Interpretation          CS: 'MONOCHROME2'
    (0028, 0010) Rows                                US: 8
    (0028, 0011) Columns                             US: 8
    (0028, 0030) Pixel Spacing                       DS: [0.3125, 0.3125]
    (0028, 0100) Bits Allocated                      US: 16
    (0028, 0101) Bits Stored                         US: 16
    (0028, 0102) High Bit                            US: 15
    (0028, 0103) Pixel Representation                US: 1
    (0028, 0106) Smallest Image Pixel Value          SS: 0
    (0028, 0107) Largest Image Pixel Value           SS: 4000
    (0028, 1050) Window Center                       DS: '600.0'
    (0028, 1051) Window Width                        DS: '1600.0'
    (7fe0, 0010) Pixel Data                          OW: Array of 128 elements
    (fffc, fffc) Data Set Trailing Padding           OB: Array of 126 elements






|

.. code-block:: default


    # authors : Guillaume Lemaitre <g.lemaitre58@gmail.com>
    # license : MIT

    import pydicom
    from pydicom.data import get_testdata_file

    print(__doc__)

    # FIXME: add a full-sized MR image in the testing data
    filename = get_testdata_file('MR_small.dcm')
    ds = pydicom.dcmread(filename)

    # get the pixel information into a numpy array
    data = ds.pixel_array
    print('The image has {} x {} voxels'.format(data.shape[0],
                                                data.shape[1]))
    data_downsampling = data[::8, ::8]
    print('The downsampled image has {} x {} voxels'.format(
        data_downsampling.shape[0], data_downsampling.shape[1]))

    # copy the data back to the original data set
    ds.PixelData = data_downsampling.tobytes()
    # update the information regarding the shape of the data array
    ds.Rows, ds.Columns = data_downsampling.shape

    # print the image information given in the dataset
    print('The information of the data set after downsampling: \n')
    print(ds)


.. rst-class:: sphx-glr-timing

   **Total running time of the script:** ( 0 minutes  0.005 seconds)


.. _sphx_glr_download_auto_examples_image_processing_plot_downsize_image.py:


.. only :: html

 .. container:: sphx-glr-footer
    :class: sphx-glr-footer-example



  .. container:: sphx-glr-download sphx-glr-download-python

     :download:`Download Python source code: plot_downsize_image.py <plot_downsize_image.py>`



  .. container:: sphx-glr-download sphx-glr-download-jupyter

     :download:`Download Jupyter notebook: plot_downsize_image.ipynb <plot_downsize_image.ipynb>`


.. only:: html

 .. rst-class:: sphx-glr-signature

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