Key research themes
1. How do advanced lossless image compression algorithms balance compression ratio, encoding/decoding speed, and applicability to different image types?
This research area focuses on evaluating and comparing state-of-the-art lossless image compression algorithms to understand trade-offs among compression efficiency, computational complexity (encoding/decoding times), and performance across various image types (e.g., 8-bit/16-bit grayscale and RGB). Such insights are critical in selecting appropriate algorithms for diverse applications ranging from medical imaging to multimedia transmission where both speed and fidelity are paramount.
2. What advancements in entropy encoding and quantization contribute to improved compression efficiency in High Efficiency Video Coding (HEVC) for lossless and near-lossless video?
This theme investigates refinements in entropy coding and quantization matrices specifically within the HEVC standard, aimed at increasing coding efficiency while managing computational complexity. These contributions address coding of transform coefficients, adoption of optimized weighting parameters, and quantization matrix adaptations to strike an effective balance between bitrate, distortion, and processing speed, crucial for real-time high-resolution video applications and transition towards lossless or near-lossless video compression.
3. How can distributed video coding approaches reduce encoder complexity while achieving low complexity, lossless or low-bit-rate video compression?
This area explores distributed video coding (DVC) frameworks which relocate computational load from encoders to decoders by leveraging principles such as the Slepian-Wolf and Wyner-Ziv theories. Approaches include transform-domain and pixel-domain residual coding, with recent enhancements focusing on decision modes to limit channel coding loads. These techniques are particularly promising for low-power devices or bandwidth-constrained applications requiring low-complexity video encoding without quality loss.