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Receptive field cooccurrence histograms for object detection

机译:用于物体检测的感受野同现直方图

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摘要

Object recognition is one of the major research topics in the field of computer vision. In robotics, there is often a need for a system that can locate certain objects in the environment - the capability which we denote as 'object detection'. In this paper, we present a new method for object detection. The method is especially suitable for detecting objects in natural scenes, as it is able to cope with problems such as complex background, varying illumination and object occlusion. The proposed method uses the receptive field representation where each pixel in the image is represented by a combination of its color and response to different filters. Thus, the cooccurrence of certain filter responses within a specific radius in the image serves as information basis for building the representation of the object. The specific goal in this paper is the development of an online learning scheme that is effective after just one training example but still has the ability to improve its performance with more time and new examples. We describe the details behind the algorithm and demonstrate its strength with an extensive experimental evaluation.
机译:对象识别是计算机视觉领域的主要研究主题之一。在机器人技术中,通常需要一种可以在环境中定位某些对象的系统-我们称之为“对象检测”的功能。在本文中,我们提出了一种新的物体检测方法。该方法能够应对诸如复杂的背景,变化的照明和物体遮挡等问题,因此特别适合于检测自然场景中的物体。所提出的方法使用接收场表示,其中图像中的每个像素由其颜色和对不同滤镜的响应的组合表示。因此,图像中特定半径内某些滤波器响应的同时出现,将作为建立对象表示的信息基础。本文的具体目标是开发一种在线学习方案,该方案仅需一个培训示例即可有效,但仍可以通过花费更多时间和新示例来提高其性能。我们描述了该算法背后的细节,并通过广泛的实验评估证明了其优势。

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