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Region-Based Representation for Object Recognition by Relaxation Labelling

机译:基于区域的松弛标记识别对象表示

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摘要

We address the problem of object recognition in computer vision. We propose an invariant representation of the model and scene in the form of Attributed Relational Graph with focus on region based measurements rather than purely interest points. This approach enhances the stability of scene image representation in the presence of noise and significant scaling. Improved solution is achieved by employing a multiple region representation at each node of the ARG.The matching of scene and model ARGs is accomplished using probabilistic relaxation that has been modified to cope with multiple scene representation. The preliminary results obtained in experiments with real data are encouraging.
机译:我们解决计算机视觉中的对象识别问题。我们以属性关系图的形式提出模型和场景的不变表示,重点放在基于区域的度量上,而不是纯粹的兴趣点上。这种方法在存在噪声和明显缩放的情况下增强了场景图像表示的稳定性。改进的解决方案是通过在ARG的每个节点上使用多区域表示来实现的。场景和模型ARG的匹配是使用概率松弛实现的,概率松弛已进行了修改以应对多个场景表示。在真实数据实验中获得的初步结果令人鼓舞。

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