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Distilling Inter-Class Distance for Semantic Segmentation

Zhengbo Zhang, Chunluan Zhou, Zhigang Tu

2022Proceedings of the Thirty-First International Joint Conference on Artificial Intelligence27 citationsDOIOpen Access PDF

Abstract

Knowledge distillation is widely adopted in semantic segmentation to reduce the computation cost. The previous knowledge distillation methods for semantic segmentation focus on pixel-wise feature alignment and intra-class feature variation distillation, neglecting to transfer the knowledge of the inter-class distance in the feature space, which is important for semantic segmentation such a pixel-wise classification task. To address this issue, we propose an Inter-class Distance Distillation (IDD) method to transfer the inter-class distance in the feature space from the teacher network to the student network. Furthermore, semantic segmentation is a position-dependent task, thus we exploit a position information distillation module to help the student network encode more position information. Extensive experiments on three popular datasets: Cityscapes, Pascal VOC and ADE20K show that our method is helpful to improve the accuracy of semantic segmentation models and achieves the state-of-the-art performance. E.g. it boosts the benchmark model (``PSPNet+ResNet18") by 7.50% in accuracy on the Cityscapes dataset.

Topics & Concepts

Computer scienceSegmentationArtificial intelligencePascal (unit)Pattern recognition (psychology)PixelBenchmark (surveying)Image segmentationClass (philosophy)Feature (linguistics)Feature extractionComputationMachine learningComputer visionAlgorithmLinguisticsGeodesyPhilosophyGeographyProgramming languageAdvanced Neural Network ApplicationsInfrastructure Maintenance and MonitoringAutomated Road and Building Extraction