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THE COMBINATION OF HMAX AND HOGS IN AN ATTENTION GUIDED FRAMEWORK FOR OBJECT LOCALIZATION

机译:Hmax和Hogs在注意对象本地化的关注引导框架中的组合

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Object detection and localization is a challenging task. Among several approaches, more recently hierarchical methods of feature-based object recognition have been developed and demonstrated high-end performance measures. Inspired by the knowledge about the architecture and function of the primate visual system, the computational HMAX model has been proposed. At the same time robust visual object recognition was proposed using feature distributions, e.g. histograms of oriented gradients (HOGs). Since both models build upon an edge representation of the input image, the question arises, whether one kind of approach might be superior to the other. Introducing a new biologically inspired attention steered processing framework, we demonstrate that the combination of both approaches gains the best results.
机译:对象检测和本地化是一个具有挑战性的任务。在若干方法中,已经开发出了最近的基于特征的物体识别方法和展示了高端性能措施的分层方法。灵感来自关于灵长类动物视觉系统的架构和功能的知识,已经提出了计算HMAX模型。同时使用特征分布提出了强大的视觉对象识别,例如,面向梯度(HOGS)的直方图。由于两种模型都在输入图像的边缘表示时构建,因此出现了问题,一种方法是否可能优于另一个。介绍了一种新的生物学启发的注意力转向加工框架,我们证明两种方法的结合获得了最佳结果。

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