Task-driven Semantic Coding via Reinforcement Learning
Xin Li, Jun Shi, Zhibo Chen

TL;DR
This paper introduces a reinforcement learning-based semantic bit allocation method for task-driven video/image coding, significantly reducing bitrate while maintaining semantic fidelity across various tasks.
Contribution
It proposes a novel semantic bit allocation approach using reinforcement learning within traditional hybrid coding frameworks, enabling end-to-end optimization for semantic fidelity.
Findings
Achieves 34.39% to 52.62% bitrate savings over H.265/HEVC.
Effective across tasks like classification, detection, and segmentation.
Demonstrates superior performance in semantic fidelity preservation.
Abstract
Task-driven semantic video/image coding has drawn considerable attention with the development of intelligent media applications, such as license plate detection, face detection, and medical diagnosis, which focuses on maintaining the semantic information of videos/images. Deep neural network (DNN)-based codecs have been studied for this purpose due to their inherent end-to-end optimization mechanism. However, the traditional hybrid coding framework cannot be optimized in an end-to-end manner, which makes task-driven semantic fidelity metric unable to be automatically integrated into the rate-distortion optimization process. Therefore, it is still attractive and challenging to implement task-driven semantic coding with the traditional hybrid coding framework, which should still be widely used in practical industry for a long time. To solve this challenge, we design semantic maps for…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Advanced Neural Network Applications · Advanced Image Processing Techniques
