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Robust high-fidelity coding technique based on entropy-biased ANN codebooks

机译:基于熵偏置ANN码本的稳健高保真编码技术

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Abstract: We investigate the use of a Differential Vector Quantizer (DVQ) architecture for the coding of digital images. An Artificial Neural Network (ANN) is used to develop entropy-based codebooks which yield substantial data compression while retaining insensitivity to transmission channel errors. Two methods are presented for variable bit-rate coding using the described DVQ algorithm. In the first method, both the encoder and the decoder have multiple codebooks of different sizes. In the second, variable bit-rates are achieved by encoding using subsets of one fixed codebook. We compare the performance of these approaches under conditions of error-free and error-prone channels.!15
机译:摘要:我们研究了差分矢量量化器(DVQ)体系结构用于数字图像编码的用途。人工神经网络(ANN)用于开发基于熵的密码本,该密码本可产生大量数据压缩,同时又对传输通道错误不敏感。提出了两种使用所述DVQ算法进行可变比特率编码的方法。在第一种方法中,编码器和解码器都具有不同大小的多个码本。第二,通过使用一个固定码本的子集进行编码来实现可变比特率。我们比较了这些方法在无错误和易于出错的信道条件下的性能。15

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