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Object Detection by Contour Segment Networks

机译:轮廓线段网络的物体检测

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摘要

We propose a method for object detection in cluttered real images, given a single hand-drawn example as model. The image edges are partitioned into contour segments and organized in an image representation which encodes their interconnections: the Contour Segment Network. The object detection problem is formulated as finding paths through the network resembling the model outlines, and a computationally efficient detection technique is presented. An extensive experimental evaluation on detecting five diverse object classes over hundreds of images demonstrates that our method works in very cluttered images, allows for scale changes and considerable intra-class shape variation, is robust to interrupted contours, and is computationally efficient.
机译:我们以单个手绘示例为模型,提出了一种在杂乱的真实图像中进行目标检测的方法。图像边缘被划分为轮廓线段,并以对它们的互连进行编码的图像表示形式进行组织:轮廓线段网络。将对象检测问题表述为通过类似于模型轮廓的网络查找路径,并提出了一种计算有效的检测技术。对数百幅图像中的五个不同对象类别进行的广泛实验评估表明,我们的方法适用于非常杂乱的图像,可以缩放比例和显着的类内形状变化,对中断的轮廓具有鲁棒性,并且计算效率高。

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