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  • Hash : 51d021bf
    Author : DRC
    Date : 2024-06-24T12:17:22

    TurboJPEG: Fix 12-bit-per-sample arith-coded compr
    
    (Regression introduced by 7bb958b732e6b4f261595e2d1527d46964fe3aed)
    
    Because of 7bb958b732e6b4f261595e2d1527d46964fe3aed, the TurboJPEG
    compression and encoding functions no longer transfer the value of
    TJPARAM_OPTIMIZE into cinfo->data_precision unless the data precision
    is 8.  The intent of that was to prevent using_std_huff_tables() from
    being called more than once when reusing the same compressor object to
    generate multiple 12-bit-per-sample JPEG images.  However, because
    cinfo->optimize_coding is always set to TRUE by jpeg_set_defaults() if
    the data precision is 12, calling applications that use 12-bit data
    precision had to unset cinfo->optimize_coding if they set
    cinfo->arith_code after calling jpeg_set_defaults().  Because of
    7bb958b732e6b4f261595e2d1527d46964fe3aed, the TurboJPEG API stopped
    doing that except with 8-bit data precision.  Thus, attempting to
    generate a 12-bit-per-sample arithmetic-coded lossy JPEG image using
    the TurboJPEG API failed with "Requested features are incompatible."
    
    Since the compressor will always fail if cinfo->arith_code and
    cinfo->optimize_coding are both set, and since cinfo->optimize_coding
    has no relevance for arithmetic coding, the most robust and user-proof
    solution is for jinit_c_master_control() to set cinfo->optimize_coding
    to FALSE if cinfo->arith_code is TRUE.
    
    This commit also:
    - modifies TJBench so that it no longer reports that it is using
      optimized baseline entropy coding in modes where that setting
      is irrelevant,
    - amends the cjpeg documentation to clarify that -optimize is implied
      when specifying -progressive or '-precision 12' without -arithmetic,
      and
    - prevents jpeg_set_defaults() from uselessly checking the value of
      cinfo->arith_code immediately after it has been set to FALSE.
    

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  • README

  • TurboJPEG Java Wrapper
    ======================
    
    The TurboJPEG shared library can optionally be built with a Java Native
    Interface wrapper, which allows the library to be loaded and used directly from
    Java applications.  The Java front end for this is defined in several classes
    located under org/libjpegturbo/turbojpeg.  The source code for these Java
    classes is licensed under a BSD-style license, so the files can be incorporated
    directly into both open source and proprietary projects without restriction.  A
    Java archive (JAR) file containing these classes is also shipped with the
    "official" distribution packages of libjpeg-turbo.
    
    TJExample.java, which should also be located in the same directory as this
    README file, demonstrates how to use the TurboJPEG Java API to compress and
    decompress JPEG images in memory.
    
    
    Performance Pitfalls
    --------------------
    
    The TurboJPEG Java API defines several convenience methods that can allocate
    image buffers or instantiate classes to hold the result of compress,
    decompress, or transform operations.  However, if you use these methods, then
    be mindful of the amount of new data you are creating on the heap.  It may be
    necessary to manually invoke the garbage collector to prevent heap exhaustion
    or to prevent performance degradation.  Background garbage collection can kill
    performance, particularly in a multi-threaded environment (Java pauses all
    threads when the GC runs.)
    
    The TurboJPEG Java API always gives you the option of pre-allocating your own
    source and destination buffers, which allows you to re-use those buffers for
    compressing/decompressing multiple images.  If the image sequence you are
    compressing or decompressing consists of images of the same size, then
    pre-allocating the buffers is recommended.
    
    
    Installation Directory
    ----------------------
    
    The TurboJPEG Java Wrapper will look for the TurboJPEG JNI library
    (libturbojpeg.so, libturbojpeg.dylib, or turbojpeg.dll) in the system library
    paths or in any paths specified in LD_LIBRARY_PATH (Un*x), DYLD_LIBRARY_PATH
    (Mac), or PATH (Windows.)  Failing this, on Un*x and Mac systems, the wrapper
    will look for the JNI library under the library directory configured when
    libjpeg-turbo was built.  If that library directory is
    /opt/libjpeg-turbo/lib32, then /opt/libjpeg-turbo/lib64 is also searched, and
    vice versa.
    
    If you installed the JNI library into another directory, then you will need
    to pass an argument of -Djava.library.path={path_to_JNI_library} to java, or
    manipulate LD_LIBRARY_PATH, DYLD_LIBRARY_PATH, or PATH to include the directory
    containing the JNI library.