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One-Shot Object Detection without Fine-Tuning

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arxiv 2005.03819 v1 pith:JKG5L2NY submitted 2020-05-08 cs.CV eess.IV

One-Shot Object Detection without Fine-Tuning

classification cs.CV eess.IV
keywords detectionobjectlearningone-shotcategoriesdatasetslimitedperformance
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Deep learning has revolutionized object detection thanks to large-scale datasets, but their object categories are still arguably very limited. In this paper, we attempt to enrich such categories by addressing the one-shot object detection problem, where the number of annotated training examples for learning an unseen class is limited to one. We introduce a two-stage model consisting of a first stage Matching-FCOS network and a second stage Structure-Aware Relation Module, the combination of which integrates metric learning with an anchor-free Faster R-CNN-style detection pipeline, eventually eliminating the need to fine-tune on the support images. We also propose novel training strategies that effectively improve detection performance. Extensive quantitative and qualitative evaluations were performed and our method exceeds the state-of-the-art one-shot performance consistently on multiple datasets.

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