Scene recognition and weakly supervised object localization with deformable part-based models

Computer Vision(2011)

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摘要
Weakly supervised discovery of common visual structure in highly variable, cluttered images is a key problem in recognition. We address this problem using deformable part-based models (DPM's) with latent SVM training [6]. These models have been introduced for fully supervised training of object detectors, but we demonstrate that they are also capable of more open-ended learning of latent structure for such tasks as scene recognition and weakly supervised object localization. For scene recognition, DPM's can capture recurring visual elements and salient objects; in combination with standard global image features, they obtain state-of-the-art results on the MIT 67-category indoor scene dataset. For weakly supervised object localization, optimization over latent DPM parameters can discover the spatial extent of objects in cluttered training images without ground-truth bounding boxes. The resulting method outperforms a recent state-of-the-art weakly supervised object localization approach on the PASCAL-07 dataset.
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关键词
indoor scene dataset,deformable part-based model,state-of-the-art weakly supervised object,weakly supervised object localization,supervised training,salient object,scene recognition,latent dpm parameter,cluttered training image,object detector,weakly supervised discovery,ground truth,image recognition,image features,support vector machines
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