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Papers/A Haar Wavelet-Based Perceptual Similarity Index for Image...

A Haar Wavelet-Based Perceptual Similarity Index for Image Quality Assessment

Rafael Reisenhofer, Sebastian Bosse, Gitta Kutyniok, Thomas Wiegand

2016-07-20DenoisingSSIMImage Quality AssessmentVideo Restoration
PaperPDF

Abstract

In most practical situations, the compression or transmission of images and videos creates distortions that will eventually be perceived by a human observer. Vice versa, image and video restoration techniques, such as inpainting or denoising, aim to enhance the quality of experience of human viewers. Correctly assessing the similarity between an image and an undistorted reference image as subjectively experienced by a human viewer can thus lead to significant improvements in any transmission, compression, or restoration system. This paper introduces the Haar wavelet-based perceptual similarity index (HaarPSI), a novel and computationally inexpensive similarity measure for full reference image quality assessment. The HaarPSI utilizes the coefficients obtained from a Haar wavelet decomposition to assess local similarities between two images, as well as the relative importance of image areas. The consistency of the HaarPSI with the human quality of experience was validated on four large benchmark databases containing thousands of differently distorted images. On these databases, the HaarPSI achieves higher correlations with human opinion scores than state-of-the-art full reference similarity measures like the structural similarity index (SSIM), the feature similarity index (FSIM), and the visual saliency-based index (VSI). Along with the simple computational structure and the short execution time, these experimental results suggest a high applicability of the HaarPSI in real world tasks.

Results

TaskDatasetMetricValueModel
Video UnderstandingMSU FR VQA DatabaseKLCC0.7451HaarPSI
Video UnderstandingMSU FR VQA DatabaseSRCC0.8982HaarPSI
Video Quality AssessmentMSU FR VQA DatabaseKLCC0.7451HaarPSI
Video Quality AssessmentMSU FR VQA DatabaseSRCC0.8982HaarPSI
Image Quality AssessmentKADID10KSRCC0.8849HaarPSI
Image Quality AssessmentTID2008PLCC0.9074HaarPSI
Image Quality AssessmentTID2008SRCC0.9104HaarPSI
Image Quality AssessmentESPLPLCC0.8526HaarPSI
Image Quality AssessmentESPLSRCC0.851HaarPSI
VideoMSU FR VQA DatabaseKLCC0.7451HaarPSI
VideoMSU FR VQA DatabaseSRCC0.8982HaarPSI
Full reference image quality assessmentKADID10KSRCC0.8849HaarPSI
Full reference image quality assessmentTID2008PLCC0.9074HaarPSI
Full reference image quality assessmentTID2008SRCC0.9104HaarPSI
Full reference image quality assessmentESPLPLCC0.8526HaarPSI
Full reference image quality assessmentESPLSRCC0.851HaarPSI

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