Publication | Open Access
SnapMix: Semantically Proportional Mixing for Augmenting Fine-grained Data
109
Citations
41
References
2021
Year
Few-shot LearningConvolutional Neural NetworkEngineeringMachine LearningMixed ImageSemantic WebDeep ModelsLarge-scale DatasetsImage AnalysisData SciencePattern RecognitionData IntegrationData ManagementSynthetic Image GenerationData AugmentationMachine VisionFeature LearningComputer ScienceData WranglingDeep LearningComputer VisionData Mixing AugmentationSemantically Proportional MixingBig Data
Data mixing augmentation has proved effective in training deep models. Recent methods mix labels mainly according to the mixture proportion of image pixels. Due to the major discriminative information of a fine-grained image usually resides in subtle regions, these methods tend to introduce heavy label noise in fine-grained recognition. We propose Semantically Proportional Mixing (SnapMix) that exploits class activation map (CAM) to lessen the label noise in augmenting fine-grained data. SnapMix generates the target label for a mixed image by estimating its intrinsic semantic composition. This strategy can adapt to asymmetric mixing operations and ensure semantic correspondence between synthetic images and target labels. Experiments show that our method consistently outperforms existing mixed-based approaches regardless of different datasets or network depths. Further, by incorporating the mid-level features, the proposed SnapMix achieves top-level performance, demonstrating its potential to serve as a strong baseline for fine-grained recognition.
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