6533b86ffe1ef96bd12cdaf5
RESEARCH PRODUCT
Combination Of Handcrafted And Deep Learning-Based Features For 3d Mesh Quality Assessment
Ilyass AbouelazizMohammed El HassouniLongin Jan LateckiAladine ChetouaniHocine Cherifisubject
business.industryComputer scienceDeep learningFeature vectorFeature extraction020207 software engineeringPattern recognition02 engineering and technologyCurvatureConvolutional neural networkVisualizationMetric (mathematics)0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingPolygon meshArtificial intelligencebusinessdescription
We propose in this paper a novel objective method to evaluate the perceived visual quality of 3D meshes. The proposed method in no-reference, it relies only on the distorted mesh for the quality estimation. It is based on a pre-trained convolutional neural network (i.e VGG to extract features from the distorted mesh) and handcrafted features extracted directly from the 3D mesh (i.e curvature and dihedral angle). A General Regression Neural Network (GRNN) is used to learn the statistical parameters of the feature vectors and estimate the quality score. Experimental results from for subjective databases (LIRIS masking, LIRIS/EPFL generalpurpose, UWB compression and LEETA simplification) and comparisons with objective metrics cited in the state-of-the-art demonstrate the efficacy of the proposed metric in terms of the correlation to the mean opinion scores across these databases.
year | journal | country | edition | language |
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2020-10-01 | 2020 IEEE International Conference on Image Processing (ICIP) |