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Papers/Exploring Localization for Self-supervised Fine-grained Co...

Exploring Localization for Self-supervised Fine-grained Contrastive Learning

Di wu, Siyuan Li, Zelin Zang, Stan Z. Li

2021-06-30Image ClassificationFine-Grained Image RecognitionContrastive LearningFine-Grained Image ClassificationObject Detection
PaperPDFCode(official)

Abstract

Self-supervised contrastive learning has demonstrated great potential in learning visual representations. Despite their success in various downstream tasks such as image classification and object detection, self-supervised pre-training for fine-grained scenarios is not fully explored. We point out that current contrastive methods are prone to memorizing background/foreground texture and therefore have a limitation in localizing the foreground object. Analysis suggests that learning to extract discriminative texture information and localization are equally crucial for fine-grained self-supervised pre-training. Based on our findings, we introduce cross-view saliency alignment (CVSA), a contrastive learning framework that first crops and swaps saliency regions of images as a novel view generation and then guides the model to localize on foreground objects via a cross-view alignment loss. Extensive experiments on both small- and large-scale fine-grained classification benchmarks show that CVSA significantly improves the learned representation.

Results

TaskDatasetMetricValueModel
Image ClassificationFGVC AircraftAccuracy87.27BYOL+CVSA (ResNet-50)
Image ClassificationCUB-200-2011Accuracy77.1BYOL+CVSA (ResNet-50)
Fine-Grained Image ClassificationFGVC AircraftAccuracy87.27BYOL+CVSA (ResNet-50)
Fine-Grained Image ClassificationCUB-200-2011Accuracy77.1BYOL+CVSA (ResNet-50)

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