Target-Quality Image Compression with Recurrent, Convolutional Neural Networks

نویسندگان

  • Michele Covell
  • Nick Johnston
  • David Minnen
  • Sung Jin Hwang
  • Joel Shor
  • Saurabh Singh
  • Damien Vincent
  • George Toderici
چکیده

We introduce a stop-code tolerant (SCT) approach to training recurrent convolutional neural networks for lossy image compression. Our methods introduce a multi-pass training method to combine the training goals of high-quality reconstructions in areas around stop-code masking as well as in highly-detailed areas. These methods lead to lower true bitrates for a given recursion count, both preand post-entropy coding, even using unstructured LZ77 code compression. The pre-LZ77 gains are achieved by trimming stop codes. The post-LZ77 gains are due to the highly unequal distributions of 0/1 codes from the SCT architectures. With these code compressions, the SCT architecture maintains or exceeds the image quality at all compression rates compared to JPEG and to RNN auto-encoders across the Kodak dataset. In addition, the SCT coding results in lower variance in image quality across the extent of the image, a characteristic that has been shown to be important in human ratings of image quality.

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عنوان ژورنال:
  • CoRR

دوره abs/1705.06687  شماره 

صفحات  -

تاریخ انتشار 2017