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Discriminatively Trained Part Based Model Armed with Biased Saliency

机译:区分性训练的基于偏置显着性的零件模型

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Discriminatively trained Part based Model (DPM) is one of the state-of-the-art object detectors. However, DPM complies little with real vision procedure. In this paper, we try arming DPM with biologically inspired approaches. On the one hand, we use Gabor instead of Histogram of Oriented Gradient (HOG) as low level features to simulate the receptive fields of simple cells. We show Gabor outperforms or is on par with HOG. On the other hand, we learn biased saliency of the object with the same Gabor features to simulate the search procedure of real vision. We combine DPM and biased saliency in a single Bayesian framework, which at least partially reflects the interactions between top-down and bottom-up vision procedures. We show these biologically inspired procedures can effectively improve the performance and efficiency of DPM. We present experimental results on both challenging PASCAL VOC2007 dataset and publicly available sequences.
机译:经过区别训练的基于零件的模型(DPM)是最新的对象检测器之一。但是,DPM很少符合实际的视觉程序。在本文中,我们尝试通过生物学启发的方法来武装DPM。一方面,我们使用Gabor代替定向梯度直方图(HOG)作为低级特征来模拟简单细胞的感受野。我们显示Gabor优于大市或与HOG持平。另一方面,我们学习具有相同Gabor特征的对象的显着显着性,以模拟真实视觉的搜索过程。我们在单个贝叶斯框架中结合了DPM和显着的显着性,这至少部分反映了自上而下和自下而上的视觉过程之间的相互作用。我们证明了这些受生物启发的程序可以有效地提高DPM的性能和效率。我们提出了具有挑战性的PASCAL VOC2007数据集和公开可用序列的实验结果。

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