IVCVAug 8, 2024

SG-JND: Semantic-Guided Just Noticeable Distortion Predictor For Image Compression

arXiv:2408.04273v18 citationsh-index: 50
Originality Incremental advance
AI Analysis

This improves image compression algorithms for applications requiring efficient transmission and quality trade-offs, though it is incremental by enhancing existing JND prediction with semantic guidance.

The paper tackles the problem of predicting just noticeable distortion (JND) for image compression by incorporating semantic information, achieving state-of-the-art performance on two public datasets.

Just noticeable distortion (JND), representing the threshold of distortion in an image that is minimally perceptible to the human visual system (HVS), is crucial for image compression algorithms to achieve a trade-off between transmission bit rate and image quality. However, traditional JND prediction methods only rely on pixel-level or sub-band level features, lacking the ability to capture the impact of image content on JND. To bridge this gap, we propose a Semantic-Guided JND (SG-JND) network to leverage semantic information for JND prediction. In particular, SG-JND consists of three essential modules: the image preprocessing module extracts semantic-level patches from images, the feature extraction module extracts multi-layer features by utilizing the cross-scale attention layers, and the JND prediction module regresses the extracted features into the final JND value. Experimental results show that SG-JND achieves the state-of-the-art performance on two publicly available JND datasets, which demonstrates the effectiveness of SG-JND and highlight the significance of incorporating semantic information in JND assessment.

Foundations

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