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Combination of Prior Relations with Visual Information by Random Walk Model for Object Recognition

机译:先验关系与视觉信息的随机游动模型相结合的目标识别

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摘要

Traditional object recognition methods in computer vision are almost based on just the visual features, which cannot perform well in a more complex circumstance. To attack this critical problem, this paper proposes a novel object recognition method which combines object recognition with the prior relations. During the training stage, structured presentation of the prior relations is applied through a hybrid graph which contains image similar sub-graph, semantic similar sub-graph and the relations between the two sub-graphs. A random walk model is then constructed according to the hybrid graph. During the recognition stage, a new testing image node is added to the random walk model. Then the relations between this node and the nodes in the random walk model are calculated. At last, random walks which start from the testing image node are performed at the random walk model. The probability rank provided by the result of random walks will serve as the recognition result of the testing image. Experimental results illustrate the validity and stronger recognition performance of the proposed method.
机译:计算机视觉中的传统目标识别方法几乎仅基于视觉特征,在更复杂的情况下无法很好地执行。为了解决这个关键问题,本文提出了一种新颖的将目标识别与先验关系相结合的目标识别方法。在训练阶段,通过包含图像相似子图,语义相似子图以及两个子图之间的关系的混合图来应用先前关系的结构化表示。然后根据混合图构造随机游走模型。在识别阶段,将新的测试图像节点添加到随机游走模型。然后计算该节点与随机游走模型中的节点之间的关系。最后,以随机游走模型执行从测试图像节点开始的随机游走。由随机游走的结果提供的概率等级将用作测试图像的识别结果。实验结果证明了该方法的有效性和更强的识别性能。

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