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首页> 外文期刊>IEICE transactions on information and systems >Deformable Part-Based Model Transfer for Object Detection
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Deformable Part-Based Model Transfer for Object Detection

机译:用于物体检测的可变形零件的模型传输

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The transfer of prior knowledge from source domains can improve the performance of learning when the training data in a target domain are insufficient. In this paper we propose a new strategy to transfer deformable part models (DPMs) for object detection, using offline-trained auxiliary DPMs of similar categories as source models to improve the performance of the target object detector. A DPM presents an object by using a root filter and several part filters. We use these filters of the auxiliary DPMs as prior knowledge and adapt the filters to the target object. With a latent transfer learning method, appropriate local features are extracted for the transfer of part filters. Our experiments demonstrate that this strategy can lead to a detector superior to some state-of-the-art methods.
机译:当目标域中的训练数据不足时,从源极域的先前知识转移可以提高学习的性能。在本文中,我们提出了一种新的策略来转移可变形部件模型(DPMS)进行对象检测,使用类似类别的离线训练的辅助DPM作为源模型来提高目标对象检测器的性能。 DPM通过使用根过滤器和几个部分过滤器来显示对象。我们将这些辅助DPM的这些过滤器用作先验知识,并将过滤器调整为目标对象。利用潜在传输学习方法,提取适当的本地特征以转移部件过滤器。我们的实验表明,该策略可以导致探测器优于某些最先进的方法。

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