MCL Research on Green Image Coding
One of the key components of Green Image Coding (GIC) is multi-grid control, which enables efficient and scalable bit allocation across the framework’s hierarchical layers. Unlike traditional hybrid codecs designed for single-layer encoding, GIC decomposes images into multiple hierarchical layers via resampling, referred to as a multi-grid representation. This decomposition effectively redistributes energy and reduces intra-layer content diversity, but it also creates a complex high-dimensional optimization challenge when attempting to allocate bits optimally across these various layers.
To make this problem tractable, we establish a theoretical foundation by defining the relationship between local and global rate-distortion (RD) models. We demonstrate that the global RD model can be derived from the local RD model of an individual layer by applying specific offsets to both rate and distortion. Notably, the distortion offset is a constant value determined by up-sampling processes and is unrelated to the compression process itself. This theoretical breakthrough reduces an intractable high-dimensional problem into a set of manageable sequential decisions.
Based on these findings, GIC implements a practical slope-matching-based rate control strategy. This strategy allocates bits across multiple grids by matching the slopes of consecutive RD curves. A primary advantage of this design is its modularity; the rate control module only requires information from two consecutive layers to function. This allows the module to be easily duplicated for any number of layers in the encoder, effectively decomposing the global rate-distortion optimization into a sequence of local optimizations to ensure a scalable balance between bit rate and image distortion.











