I. Introduction
In recent years, the rapid development of brain imaging technology has promoted the advancement of many fields such as medicine and artificial intelligence. However, as the center of the nervous system, the brain usually has a complex structure, and imaging it will generate massive amounts of data. For example, the brain of drosophila contains about 105 of neurons, and its raw images occupy about 106 terabyte (TB) of storage space [1]. The human brain has more than 1.5×1010 neurons, and the space required to store its raw images will be unimaginable. This puts forward a great demand for efficient brain image compression methods.