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Updated: Aug 7, 2025

High-resolution, High-speed, Three-dimensional Video Imaging with Digital Fringe Projection Techniques
Published on: December 3, 2013
A Hardware-Friendlyand High-Efficiency H.265/HEVC Encoder for Visual Sensor Networks.
Chi-Ting Ni1, Ying-Chia Huang1, Pei-Yin Chen1
1Department of Computer Science and Information Engineering, National Cheng Kung University, Tainan 70101, Taiwan.
This study introduces a hardware-friendly algorithm to accelerate High-Efficiency Video Coding (HEVC/H.265) for visual sensor networks. The method significantly reduces encoding time while maintaining high video quality.
Area of Science:
- Computer Vision
- Video Compression
- Hardware Acceleration
Background:
- Visual sensor networks (VSNs) generate large data volumes, posing storage and transmission challenges.
- High-Efficiency Video Coding (HEVC/H.265) offers high compression but suffers from computational complexity.
- Existing solutions struggle to balance compression efficiency and processing demands in VSNs.
Purpose of the Study:
- To develop a hardware-friendly algorithm for accelerating HEVC/H.265 encoding in VSNs.
- To address the high computational complexity associated with HEVC/H.265 video compression.
- To improve the efficiency of video data processing for VSN applications.
Main Methods:
- Proposed a novel algorithm leveraging texture direction and complexity analysis.
- Implemented optimizations for CU partition skipping and accelerated intra prediction.
- Focused on intra-frame encoding acceleration for VSN data.
Main Results:
- Achieved a 45.33% reduction in encoding time compared to HM16.22 under all-intra configuration.
- Introduced a minimal Bjontegaard delta bit rate (BDBR) increase of only 1.07%.
- Demonstrated a 53.72% encoding time reduction on six VSN video sequences.
Conclusions:
- The proposed algorithm offers a high-efficiency solution for HEVC/H.265 acceleration in VSNs.
- Successfully balances encoding time reduction with minimal impact on video quality (BDBR).
- Provides a practical approach for managing large visual data streams in sensor networks.

