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Discriminative Semantic Parts Learning for Object Detection

机译:判别语义部分学习的目标检测

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In this letter, we propose a new semantic parts learning approach to address the object detection problem with only the bounding boxes of object category labels. Our main observation is that even though the appearance and arrangement of object parts might have variations across the instances of different object categories, the constituent parts still maintain geometric consistency. Specifically, we propose a discriminative clustering method with sparse representation refinement to discover the mid-level semantic part set automatically. Then each semantic part detector is learned by the linear SVM in a one-vs-all manner. Finally, we utilize the learned part detectors to score the test image and integrate all the response maps of part detectors to obtain the detection result. The learned class-generic part detectors have the ability to capture the objects across different categories. Experimental results show that the performance of our approach can outperform some recent competing methods.
机译:在这封信中,我们提出了一种新的语义部分学习方法,该方法仅用对象类别标签的边界框来解决对象检测问题。我们的主要观察结果是,即使对象零件的外观和布置在不同对象类别的实例之间可能会有变化,但组成零件仍保持几何一致性。具体而言,我们提出了一种具有稀疏表示精细度的判别聚类方法,以自动发现中级语义部分集。然后,线性SVM以一对多的方式学习每个语义部分检测器。最后,我们利用学习到的零件检测器对测试图像进​​行评分,并整合零件检测器的所有响应图以获得检测结果。学习过的类通用零件检测器具有捕获不同类别对象的能力。实验结果表明,我们的方法的性能可以胜过某些最新的竞争方法。

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