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  • Configuration spécifique d’Apache

    4 février 2011, par

    Modules spécifiques
    Pour la configuration d’Apache, il est conseillé d’activer certains modules non spécifiques à MediaSPIP, mais permettant d’améliorer les performances : mod_deflate et mod_headers pour compresser automatiquement via Apache les pages. Cf ce tutoriel ; mode_expires pour gérer correctement l’expiration des hits. Cf ce tutoriel ;
    Il est également conseillé d’ajouter la prise en charge par apache du mime-type pour les fichiers WebM comme indiqué dans ce tutoriel.
    Création d’un (...)

  • Emballe Médias : Mettre en ligne simplement des documents

    29 octobre 2010, par

    Le plugin emballe médias a été développé principalement pour la distribution mediaSPIP mais est également utilisé dans d’autres projets proches comme géodiversité par exemple. Plugins nécessaires et compatibles
    Pour fonctionner ce plugin nécessite que d’autres plugins soient installés : CFG Saisies SPIP Bonux Diogène swfupload jqueryui
    D’autres plugins peuvent être utilisés en complément afin d’améliorer ses capacités : Ancres douces Légendes photo_infos spipmotion (...)

  • Des sites réalisés avec MediaSPIP

    2 mai 2011, par

    Cette page présente quelques-uns des sites fonctionnant sous MediaSPIP.
    Vous pouvez bien entendu ajouter le votre grâce au formulaire en bas de page.

Sur d’autres sites (4964)

  • Need encoding from images to video on Android

    12 septembre 2016, par a2ronus

    We need an Android app that can encode a folder of images to a video. I have been looking for solutions a while now, but cannot find anything good. The Android API does not support it. We are trying ffmpeg, but cannot get it to work. We need a working solution, using ffmpeg is not mandatory. A full Android Java solution is also a possibility, since this would work on all Android devices, possibly at the cost of some performance.

    The app also needs to be able to add an audio track to the movie if the user chooses to do this.

    Any help would be appreciated.

    Kind regards,

    Aäron

  • vsrc_movie : rename video movie specific callbacks, prefix them with "movie"

    18 août 2011, par Stefano Sabatini

    vsrc_movie : rename video movie specific callbacks, prefix them with "movie"

  • Basic Video Palette Conversion

    20 août 2011, par Multimedia Mike — General, Python

    How do you take a 24-bit RGB image and convert it to an 8-bit paletted image for the purpose of compression using a codec that requires 8-bit input images ? Seems simple enough and that’s what I’m tackling in this post.

    Ask FFmpeg/Libav To Do It
    Ideally, FFmpeg / Libav should be able to handle this automatically. Indeed, FFmpeg used to be able to, at least at the time I wrote this post about ZMBV and was unhappy with FFmpeg’s default results. Somewhere along the line, FFmpeg and Libav lost the ability to do this. I suspect it got removed during some swscale refactoring.

    Still, there’s no telling if the old system would have computed palettes correctly for QuickTime files.

    Distance Approach
    When I started writing my SMC video encoder, I needed to convert RGB (from PNG files) to PAL8 colorspace. The path of least resistance was to match the pixels in the input image to the default 256-color palette that QuickTime assumes (and is hardcoded into FFmpeg/Libav).

    How to perform the matching ? Find the palette entry that is closest to a given input pixel, where "closest" is the minimum distance as computed by the usual distance formula (square root of the sum of the squares of the diffs of all the components).



    That means for each pixel in an image, check the pixel against 256 palette entries (early termination is possible if an acceptable threshold is met). As you might imagine, this can be a bit time-consuming. I wondered about a faster approach...

    Lookup Table
    I think this is the approach that FFmpeg used to use, but I went and derived it for myself after studying the default QuickTime palette table. There’s a pattern there— all of the RGB entries are comprised of combinations of 6 values — 0x00, 0x33, 0x66, 0x99, 0xCC, and 0xFF. If you mix and match these for red, green, and blue values, you come up with 6 * 6 * 6 = 216 different colors. This happens to be identical to the web-safe color palette.

    The first (0th) entry in the table is (FF, FF, FF), followed by (FF, FF, CC), (FF, FF, 99), and on down to (FF, FF, 00) when the green component gets knocked down and step and the next color is (FF, CC, FF). The first 36 palette entries in the table all have a red component of 0xFF. Thus, if an input RGB pixel has a red color closest to 0xFF, it must map to one of those first 36 entries.

    I created a table which maps indices 0..215 to values from 5..0. Each of the R, G, and B components of an input pixel are used to index into this table and derive 3 indices ri, gi, and bi. Finally, the index into the palette table is given by :

      index = ri * 36 + gi * 6 + bi
    

    For example, the pixel (0xFE, 0xFE, 0x01) would yield ri, gi, and bi values of 0, 0, and 5. Therefore :

      index = 0 * 36 + 0 * 6 + 5
    

    The palette index is 5, which maps to color (0xFF, 0xFF, 0x00).

    Validation
    So I was pretty pleased with myself for coming up with that. Now, ideally, swapping out one algorithm for another in my SMC encoder should yield identical results. That wasn’t the case, initially.

    One problem is that the regulation QuickTime palette actually has 40 more entries above and beyond the typical 216-entry color cube (rounding out the grand total of 256 colors). Thus, using the distance approach with the full default table provides for a little more accuracy.

    However, there still seems to be a problem. Let’s check our old standby, the Big Buck Bunny logo image :



    Distance approach using the full 256-color QuickTime default palette


    Distance approach using the 216-color palette


    Table lookup approach using the 216-color palette

    I can’t quite account for that big red splotch there. That’s the most notable difference between images 1 and 2 and the only visible difference between images 2 and 3.

    To prove to myself that the distance approach is equivalent to the table approach, I wrote a Python script to iterate through all possible RGB combinations and verify the equivalence. If you’re not up on your base 2 math, that’s 224 or 16,777,216 colors to run through. I used Python’s multiprocessing module to great effect and really maximized a Core i7 CPU with 8 hardware threads.

    So I’m confident that the palette conversion techniques are sound. The red spot is probably attributable to a bug in my WIP SMC encoder.

    Source Code
    Update August 23, 2011 : Here’s the Python code I used for proving equivalence between the 2 approaches. In terms of leveraging multiple CPUs, it’s possibly the best program I have written to date.

    PYTHON :
    1. # !/usr/bin/python
    2.  
    3. from multiprocessing import Pool
    4.  
    5. palette = []
    6. pal8_table = []
    7.  
    8. def process_r(r) :
    9.  counts = []
    10.  
    11.  for i in xrange(216) :
    12.   counts.append(0)
    13.  
    14.  print "r = %d" % (r)
    15.  for g in xrange(256) :
    16.   for b in xrange(256) :
    17.    min_dsqrd = 0xFFFFFFFF
    18.    best_index = 0
    19.    for i in xrange(len(palette)) :
    20.     dr = palette[i][0] - r
    21.     dg = palette[i][1] - g
    22.     db = palette[i][2] - b
    23.     dsqrd = dr * dr + dg * dg + db * db
    24.     if dsqrd <min_dsqrd :
    25.      min_dsqrd = dsqrd
    26.      best_index = i
    27.    counts[best_index] += 1
    28.  
    29.    # check if the distance approach deviates from the table-based approach
    30.    i = best_index
    31.    r = palette[i][0]
    32.    g = palette[i][1]
    33.    b = palette[i][2]
    34.    ri = pal8_table[r]
    35.    gi = pal8_table[g]
    36.    bi = pal8_table[b]
    37.    table_index = ri * 36 + gi * 6 + bi ;
    38.    if table_index != best_index :
    39.     print "(0x%02X 0x%02X 0x%02X) : distance index = %d, table index = %d" % (r, g, b, best_index, table_index)
    40.  
    41.  return counts
    42.  
    43. if __name__ == ’__main__’ :
    44.  counts = []
    45.  for i in xrange(216) :
    46.   counts.append(0)
    47.  
    48.  # initialize reference palette
    49.  color_steps = [ 0xFF, 0xCC, 0x99, 0x66, 0x33, 0x00 ]
    50.  for r in color_steps :
    51.   for g in color_steps :
    52.    for b in color_steps :
    53.     palette.append([r, g, b])
    54.  
    55.  # initialize palette conversion table
    56.  for i in range(0, 26) :
    57.   pal8_table.append(5)
    58.  for i in range(26, 77) :
    59.   pal8_table.append(4)
    60.  for i in range(77, 128) :
    61.   pal8_table.append(3)
    62.  for i in range(128, 179) :
    63.   pal8_table.append(2)
    64.  for i in range(179, 230) :
    65.   pal8_table.append(1)
    66.  for i in range(230, 256) :
    67.   pal8_table.append(0)
    68.  
    69.  # create a pool of worker threads and break up the overall job
    70.  pool = Pool()
    71.  it = pool.imap_unordered(process_r, range(256))
    72.  try :
    73.   while 1 :
    74.    partial_counts = it.next()
    75.    for i in xrange(216) :
    76.     counts[i] += partial_counts[i]
    77.  except StopIteration :
    78.   pass
    79.  
    80.  print "index, count, red, green, blue"
    81.  for i in xrange(len(counts)) :
    82.   print "%d, %d, %d, %d, %d" % (i, counts[i], palette[i][0], palette[i][1], palette[i][2])