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Papers/Reducing Label Noise in Anchor-Free Object Detection

Reducing Label Noise in Anchor-Free Object Detection

Nermin Samet, Samet Hicsonmez, Emre Akbas

2020-08-03BMVC 2020 8object-detectionObject DetectionSmall Object Detection
PaperPDFCode(official)

Abstract

Current anchor-free object detectors label all the features that spatially fall inside a predefined central region of a ground-truth box as positive. This approach causes label noise during training, since some of these positively labeled features may be on the background or an occluder object, or they are simply not discriminative features. In this paper, we propose a new labeling strategy aimed to reduce the label noise in anchor-free detectors. We sum-pool predictions stemming from individual features into a single prediction. This allows the model to reduce the contributions of non-discriminatory features during training. We develop a new one-stage, anchor-free object detector, PPDet, to employ this labeling strategy during training and a similar prediction pooling method during inference. On the COCO dataset, PPDet achieves the best performance among anchor-free top-down detectors and performs on-par with the other state-of-the-art methods. It also outperforms all major one-stage and two-stage methods in small object detection (${AP}_{S}$ $31.4$). Code is available at https://github.com/nerminsamet/ppdet

Results

TaskDatasetMetricValueModel
Object DetectionCOCO test-devAP5064.8PPDet (ResNeXt-101-FPN, multiscale)
Object DetectionCOCO test-devAP7551.6PPDet (ResNeXt-101-FPN, multiscale)
Object DetectionCOCO test-devAPL56.4PPDet (ResNeXt-101-FPN, multiscale)
Object DetectionCOCO test-devAPM49.9PPDet (ResNeXt-101-FPN, multiscale)
Object DetectionCOCO test-devAPS31.4PPDet (ResNeXt-101-FPN, multiscale)
Object DetectionCOCO test-devbox mAP46.3PPDet (ResNeXt-101-FPN, multiscale)
Object DetectionCOCO minivalAP5059.5PPDet (ResNet-101-FPN)
Object DetectionCOCO minivalAP7544.2PPDet (ResNet-101-FPN)
Object DetectionCOCO minivalAPL52.3PPDet (ResNet-101-FPN)
Object DetectionCOCO minivalAPM44.7PPDet (ResNet-101-FPN)
Object DetectionCOCO minivalAPS25.4PPDet (ResNet-101-FPN)
Object DetectionCOCO minivalbox AP40.5PPDet (ResNet-101-FPN)
3DCOCO test-devAP5064.8PPDet (ResNeXt-101-FPN, multiscale)
3DCOCO test-devAP7551.6PPDet (ResNeXt-101-FPN, multiscale)
3DCOCO test-devAPL56.4PPDet (ResNeXt-101-FPN, multiscale)
3DCOCO test-devAPM49.9PPDet (ResNeXt-101-FPN, multiscale)
3DCOCO test-devAPS31.4PPDet (ResNeXt-101-FPN, multiscale)
3DCOCO test-devbox mAP46.3PPDet (ResNeXt-101-FPN, multiscale)
3DCOCO minivalAP5059.5PPDet (ResNet-101-FPN)
3DCOCO minivalAP7544.2PPDet (ResNet-101-FPN)
3DCOCO minivalAPL52.3PPDet (ResNet-101-FPN)
3DCOCO minivalAPM44.7PPDet (ResNet-101-FPN)
3DCOCO minivalAPS25.4PPDet (ResNet-101-FPN)
3DCOCO minivalbox AP40.5PPDet (ResNet-101-FPN)
2D ClassificationCOCO test-devAP5064.8PPDet (ResNeXt-101-FPN, multiscale)
2D ClassificationCOCO test-devAP7551.6PPDet (ResNeXt-101-FPN, multiscale)
2D ClassificationCOCO test-devAPL56.4PPDet (ResNeXt-101-FPN, multiscale)
2D ClassificationCOCO test-devAPM49.9PPDet (ResNeXt-101-FPN, multiscale)
2D ClassificationCOCO test-devAPS31.4PPDet (ResNeXt-101-FPN, multiscale)
2D ClassificationCOCO test-devbox mAP46.3PPDet (ResNeXt-101-FPN, multiscale)
2D ClassificationCOCO minivalAP5059.5PPDet (ResNet-101-FPN)
2D ClassificationCOCO minivalAP7544.2PPDet (ResNet-101-FPN)
2D ClassificationCOCO minivalAPL52.3PPDet (ResNet-101-FPN)
2D ClassificationCOCO minivalAPM44.7PPDet (ResNet-101-FPN)
2D ClassificationCOCO minivalAPS25.4PPDet (ResNet-101-FPN)
2D ClassificationCOCO minivalbox AP40.5PPDet (ResNet-101-FPN)
2D Object DetectionCOCO test-devAP5064.8PPDet (ResNeXt-101-FPN, multiscale)
2D Object DetectionCOCO test-devAP7551.6PPDet (ResNeXt-101-FPN, multiscale)
2D Object DetectionCOCO test-devAPL56.4PPDet (ResNeXt-101-FPN, multiscale)
2D Object DetectionCOCO test-devAPM49.9PPDet (ResNeXt-101-FPN, multiscale)
2D Object DetectionCOCO test-devAPS31.4PPDet (ResNeXt-101-FPN, multiscale)
2D Object DetectionCOCO test-devbox mAP46.3PPDet (ResNeXt-101-FPN, multiscale)
2D Object DetectionCOCO minivalAP5059.5PPDet (ResNet-101-FPN)
2D Object DetectionCOCO minivalAP7544.2PPDet (ResNet-101-FPN)
2D Object DetectionCOCO minivalAPL52.3PPDet (ResNet-101-FPN)
2D Object DetectionCOCO minivalAPM44.7PPDet (ResNet-101-FPN)
2D Object DetectionCOCO minivalAPS25.4PPDet (ResNet-101-FPN)
2D Object DetectionCOCO minivalbox AP40.5PPDet (ResNet-101-FPN)
16kCOCO test-devAP5064.8PPDet (ResNeXt-101-FPN, multiscale)
16kCOCO test-devAP7551.6PPDet (ResNeXt-101-FPN, multiscale)
16kCOCO test-devAPL56.4PPDet (ResNeXt-101-FPN, multiscale)
16kCOCO test-devAPM49.9PPDet (ResNeXt-101-FPN, multiscale)
16kCOCO test-devAPS31.4PPDet (ResNeXt-101-FPN, multiscale)
16kCOCO test-devbox mAP46.3PPDet (ResNeXt-101-FPN, multiscale)
16kCOCO minivalAP5059.5PPDet (ResNet-101-FPN)
16kCOCO minivalAP7544.2PPDet (ResNet-101-FPN)
16kCOCO minivalAPL52.3PPDet (ResNet-101-FPN)
16kCOCO minivalAPM44.7PPDet (ResNet-101-FPN)
16kCOCO minivalAPS25.4PPDet (ResNet-101-FPN)
16kCOCO minivalbox AP40.5PPDet (ResNet-101-FPN)

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