Saliency-Guided Complexity Control for HEVC Decoding
Ren Yang, Mai Xu, Zulin Wang, Yiping Duan, Xiaoming Tao

TL;DR
This paper introduces a Saliency-Guided Complexity Control method for HEVC decoding that reduces computational complexity while maintaining perceptual quality by selectively disabling features based on saliency.
Contribution
It proposes a novel formulation and model for controlling HEVC decoding complexity using saliency information, enabling targeted complexity reduction with minimal perceptual quality loss.
Findings
Effective complexity reduction to target levels
Maintains perceptual quality with minimal loss
Improves control performance and stability
Abstract
The latest High Efficiency Video Coding (HEVC) standard significantly improves coding efficiency over its previous video coding standards. The expense of such improvement is enormous computational complexity, from both encoding and decoding sides. Since computational capability and power capacity are diverse across portable devices, it is necessary to reduce decoding complexity to a target with tolerable quality loss, so called complexity control. This paper proposes a Saliency-Guided Complexity Control (SGCC) approach for HEVC decoding, which reduces the decoding complexity to the target with minimal perceptual quality loss. First, we establish the SGCC formulation to minimize perceptual quality loss at the constraint on reduced decoding complexity, which is achieved via disabling Deblocking Filter (DF) and simplifying Motion Compensation (MC) of some non-salient Coding Tree Units…
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