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Papers/Open-Vocabulary Object Detection Using Captions

Open-Vocabulary Object Detection Using Captions

Alireza Zareian, Kevin Dela Rosa, Derek Hao Hu, Shih-Fu Chang

2020-11-20CVPR 2021 1Open Vocabulary Attribute DetectionOpen Vocabulary Object Detectionobject-detectionZero-Shot LearningObject Detection
PaperPDFCode(official)

Abstract

Despite the remarkable accuracy of deep neural networks in object detection, they are costly to train and scale due to supervision requirements. Particularly, learning more object categories typically requires proportionally more bounding box annotations. Weakly supervised and zero-shot learning techniques have been explored to scale object detectors to more categories with less supervision, but they have not been as successful and widely adopted as supervised models. In this paper, we put forth a novel formulation of the object detection problem, namely open-vocabulary object detection, which is more general, more practical, and more effective than weakly supervised and zero-shot approaches. We propose a new method to train object detectors using bounding box annotations for a limited set of object categories, as well as image-caption pairs that cover a larger variety of objects at a significantly lower cost. We show that the proposed method can detect and localize objects for which no bounding box annotation is provided during training, at a significantly higher accuracy than zero-shot approaches. Meanwhile, objects with bounding box annotation can be detected almost as accurately as supervised methods, which is significantly better than weakly supervised baselines. Accordingly, we establish a new state of the art for scalable object detection.

Results

TaskDatasetMetricValueModel
Object DetectionMSCOCOAP 0.522.8OVR-CNN
Object DetectionOVAD benchmarkmean average precision15.1OVR (ResNet50)
3DMSCOCOAP 0.522.8OVR-CNN
3DOVAD benchmarkmean average precision15.1OVR (ResNet50)
2D ClassificationMSCOCOAP 0.522.8OVR-CNN
2D ClassificationOVAD benchmarkmean average precision15.1OVR (ResNet50)
2D Object DetectionMSCOCOAP 0.522.8OVR-CNN
2D Object DetectionOVAD benchmarkmean average precision15.1OVR (ResNet50)
Open Vocabulary Object DetectionMSCOCOAP 0.522.8OVR-CNN
Open Vocabulary Object DetectionOVAD benchmarkmean average precision15.1OVR (ResNet50)
16kMSCOCOAP 0.522.8OVR-CNN
16kOVAD benchmarkmean average precision15.1OVR (ResNet50)

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