Keisuke Kaji, Yasuyo Kita, Ichiro Matsuda, Susumu Itoh, Yusuke Kameda
2022 Picture Coding Symposium (PCS) 79-83 2022年12月7日 査読有り
An autoregressive image generative model that estimates the conditional probability distributions of image signals pel-by-pel is a promising tool for lossless image coding. In this paper, a generative model based on a convolutional neural network (CNN) was combined with a locally trained adaptive predictor to improve its accuracy. Furthermore, sets of parameters that adjust the estimated probability distribution were numerically optimized for each image to minimize the resulting coding rate. Simulation results indicate that the proposed method improves the coding efficiency obtained by the CNN-based model for most of the tested images.