JOURNAL ARTICLE

<title>Perceptual coders and perceptual metrics</title>

Junqing ChenThrasyvoulos N. Pappas

Year: 2001 Journal:   Proceedings of SPIE, the International Society for Optical Engineering/Proceedings of SPIE Vol: 4299 Pages: 150-162   Publisher: SPIE

Abstract

We examine perceptual metrics and use them to evaluate the quality of still image coders. We show that mean-squared- error based metrics fail to predict image quality when one compares artifacts generated by different types of image coders. We consider three different types of coders: JPEG, the Safranek-Johnston perceptual subband coder (PIC), and the Said-Pearlman SPIHT algorithm with perceptually weighted subband quantization, based on the Watson et al. visual thresholds. We show that incorporating perceptual weighting in the SPIHT algorithm results in significant improvement in visual quality. The metrics we consider are based on the same image decompositions as the corresponding compression algorithms. Such metrics are computationally efficient and considerably simpler than more elaborate metrics. However, since each of the metrics is used for the optimization of a coder, one expects that they would be biased towards that coder. We use the metrics to evaluate the performance of the compression techniques for a wide range of bit rates. Our experiments indicate that the PIC metric provides the best correlation with subjective evaluations. It predicts that at very low bit rates the SPIHT algorithm and the 8 by 8 PIC coder perform the best, while at high bit rates the 4 by 4 PIC coder is the best. More importantly, we show that the relative algorithm performance depends on image content, with the subband and DCT coders performing best for images with a lot of high frequency content, and the wavelet coders performing best for smoother images.

Keywords:
Set partitioning in hierarchical trees Quantization (signal processing) Weighting Computer science JPEG 2000 Metric (unit) Image compression Artificial intelligence Image quality Speech recognition Data compression Pattern recognition (psychology) Algorithm Image (mathematics) Image processing

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13
Cited By
0.34
FWCI (Field Weighted Citation Impact)
0
Refs
0.67
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Citation History

Topics

Advanced Data Compression Techniques
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
Image and Signal Denoising Methods
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
Advanced Image Processing Techniques
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition

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