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Papers/SimLTD: Simple Supervised and Semi-Supervised Long-Tailed ...

SimLTD: Simple Supervised and Semi-Supervised Long-Tailed Object Detection

Phi Vu Tran

2024-12-28CVPR 2025 1Few-Shot Object DetectionTransfer LearningLong-tailed Object DetectionObject DetectionSemi-Supervised Object Detection
PaperPDFCode(official)

Abstract

Recent years have witnessed tremendous advances on modern visual recognition systems. Despite such progress, many vision models still struggle with the open problem of learning from few exemplars. This paper focuses on the task of object detection in the setting where object classes follow a natural long-tailed distribution. Existing approaches to long-tailed detection resort to external ImageNet labels to augment the low-shot training instances. However, such dependency on a large labeled database is impractical and has limited utility in realistic scenarios. We propose a more versatile approach to leverage optional unlabeled images, which are easy to collect without the burden of human annotations. Our SimLTD framework is straightforward and intuitive, and consists of three simple steps: (1) pre-training on abundant head classes; (2) transfer learning on scarce tail classes; and (3) fine-tuning on a sampled set of both head and tail classes. Our approach can be viewed as an improved head-to-tail model transfer paradigm without the added complexities of meta-learning or knowledge distillation, as was required in past research. By harnessing supplementary unlabeled images, without extra image labels, SimLTD establishes new record results on the challenging LVIS v1 benchmark across both supervised and semi-supervised settings.

Results

TaskDatasetMetricValueModel
Object DetectionLVIS v1.0 valbox AP51.5SimLTD w/MixPL (Swin-L + COCO unlabeled images)
Object DetectionLVIS v1.0 valbox AP49.8SimLTD Fully Supervised (Swin-L)
Object DetectionLVIS v1.0 valbox APr42.4SimLTD Fully Supervised (Swin-L)
3DLVIS v1.0 valbox AP51.5SimLTD w/MixPL (Swin-L + COCO unlabeled images)
3DLVIS v1.0 valbox AP49.8SimLTD Fully Supervised (Swin-L)
3DLVIS v1.0 valbox APr42.4SimLTD Fully Supervised (Swin-L)
2D ClassificationLVIS v1.0 valbox AP51.5SimLTD w/MixPL (Swin-L + COCO unlabeled images)
2D ClassificationLVIS v1.0 valbox AP49.8SimLTD Fully Supervised (Swin-L)
2D ClassificationLVIS v1.0 valbox APr42.4SimLTD Fully Supervised (Swin-L)
2D Object DetectionLVIS v1.0 valbox AP51.5SimLTD w/MixPL (Swin-L + COCO unlabeled images)
2D Object DetectionLVIS v1.0 valbox AP49.8SimLTD Fully Supervised (Swin-L)
2D Object DetectionLVIS v1.0 valbox APr42.4SimLTD Fully Supervised (Swin-L)
16kLVIS v1.0 valbox AP51.5SimLTD w/MixPL (Swin-L + COCO unlabeled images)
16kLVIS v1.0 valbox AP49.8SimLTD Fully Supervised (Swin-L)
16kLVIS v1.0 valbox APr42.4SimLTD Fully Supervised (Swin-L)

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