An Efficient Adaptive Compression Method for Human Perception and Machine Vision Tasks
Lei Liu, Zhenghao Chen, Zhihao Hu, Dong Xu

TL;DR
This paper presents an adaptive compression method that optimizes image and video data for both human perception and machine vision tasks, improving performance across diverse applications.
Contribution
The proposed EAC method introduces adaptive feature selection and task-specific tuning, enabling efficient compression optimized for multiple machine vision tasks alongside human perception.
Findings
Enhances machine vision task performance while maintaining human visual quality.
Seamlessly integrates with existing neural image and video compression methods.
Proven effective on multiple benchmark datasets across various tasks.
Abstract
While most existing neural image compression (NIC) and neural video compression (NVC) methodologies have achieved remarkable success, their optimization is primarily focused on human visual perception. However, with the rapid development of artificial intelligence, many images and videos will be used for various machine vision tasks. Consequently, such existing compression methodologies cannot achieve competitive performance in machine vision. In this work, we introduce an efficient adaptive compression (EAC) method tailored for both human perception and multiple machine vision tasks. Our method involves two key modules: 1), an adaptive compression mechanism, that adaptively selects several subsets from latent features to balance the optimizations for multiple machine vision tasks (e.g., segmentation, and detection) and human vision. 2), a task-specific adapter, that uses the…
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Taxonomy
TopicsImage Retrieval and Classification Techniques · Advanced Image and Video Retrieval Techniques · Medical Image Segmentation Techniques
