2022
DOI: 10.48550/arxiv.2205.14510
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Q-LIC: Quantizing Learned Image Compression with Channel Splitting

Abstract: Learned image compression (LIC) has reached a comparable coding gain with traditional hand-crafted methods such as VVC intra. However, the large network complexity prohibits the usage of LIC on resource-limited embedded systems. Network quantization is an efficient way to reduce the network burden. This paper presents a quantized LIC (QLIC) by channel splitting. First, we explore that the influence of quantization error to the reconstruction error is different for various channels. Second, we split the channel… Show more

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