6533b85afe1ef96bd12b9f0c
RESEARCH PRODUCT
No-reference mesh visual quality assessment via ensemble of convolutional neural networks and compact multi-linear pooling
Aladine ChetouaniMohammed El HassouniIlyass AbouelazizHocine CherifiLongin Jan Lateckisubject
business.industryComputer scienceDeep learningFeature vectorPoolingPattern recognition02 engineering and technology01 natural sciencesConvolutional neural networkResidual neural networkArtificial IntelligenceFeature (computer vision)0103 physical sciencesSignal Processing0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingComputer Vision and Pattern RecognitionArtificial intelligence010306 general physicsbusinessFeature learningSoftwaredescription
Abstract Blind or No reference quality evaluation is a challenging issue since it is done without access to the original content. In this work, we propose a method based on deep learning for the mesh visual quality assessment without reference. For a given 3D model, we first compute its mesh saliency. Then, we extract views from the 3D mesh and the corresponding mesh saliency. After that, the views are split into small patches that are filtered using a saliency threshold. Only the salient patches are selected and used as input data. After that, three pre-trained deep convolutional neural networks are employed for feature learning: VGG, AlexNet, and ResNet. Each network is fine-tuned and produces a feature vector. The Compact Multi-linear Pooling (CMP) is used afterward to fuse the retrieved vectors into a global feature representation. Finally, fully connected layers followed by a regression module are used to estimate the quality score. Extensive experiments are executed on four mesh quality datasets and comparisons with existing methods demonstrate the effectiveness of our method in terms of correlation with subjective scores.
year | journal | country | edition | language |
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2020-04-01 | Pattern Recognition |