Publication | Closed Access
Unsupervised feature learning framework for no-reference image quality assessment
791
Citations
31
References
2012
Year
Unknown Venue
Image ClassificationMachine VisionImage AnalysisData ScienceMachine LearningPattern RecognitionDeep LearningBiometricsEngineeringFeature LearningVideo QualityImage DenoisingUnsupervised Feature LearningMedical Image ComputingImage Quality AssessmentRaw Image PatchesImage QualityComputer Vision
In this paper, we present an efficient general-purpose objective no-reference (NR) image quality assessment (IQA) framework based on unsupervised feature learning. The goal is to build a computational model to automatically predict human perceived image quality without a reference image and without knowing the distortion present in the image. Previous approaches for this problem typically rely on hand-crafted features which are carefully designed based on prior knowledge. In contrast, we use raw-image-patches extracted from a set of unlabeled images to learn a dictionary in an unsupervised manner. We use soft-assignment coding with max pooling to obtain effective image representations for quality estimation. The proposed algorithm is very computationally appealing, using raw image patches as local descriptors and using soft-assignment for encoding. Furthermore, unlike previous methods, our unsupervised feature learning strategy enables our method to adapt to different domains. CORNIA (Codebook Representation for No-Reference Image Assessment) is tested on LIVE database and shown to perform statistically better than the full-reference quality measure, structural similarity index (SSIM) and is shown to be comparable to state-of-the-art general purpose NR-IQA algorithms.
| Year | Citations | |
|---|---|---|
Page 1
Page 1