Incremental Object Matching with Bayesian Methods and Particle Filters

M. Toivanen, J. Lampinen
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引用次数: 6

Abstract

In batch learning all the training examples have to be available at once to train the model, which often leads to slow performance and large memory requirements. Little work has been done in developing incremental object learners. In this paper, we present an incremental method that finds corresponding points of similar object instances, appearing in natural grayscale images with arbitrary location, scale and orientation. The approach is Bayesian and combines the shape and appearance of the corresponding points into the posterior distribution for the location of them. The posterior distribution is recursively sampled with particle filters to locate the most probable corresponding point sets in the image being processed. The results indicate that the matched corresponding points can be used in forming a representation of the object, which can be used in detecting instances of the object in novel test images.
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基于贝叶斯方法和粒子滤波的增量目标匹配
在批量学习中,所有的训练样例必须同时可用来训练模型,这通常会导致性能下降和对内存的需求增加。在开发增量对象学习器方面做的工作很少。在本文中,我们提出了一种增量方法来寻找在任意位置、尺度和方向的自然灰度图像中出现的相似目标实例的对应点。该方法采用贝叶斯方法,并将相应点的形状和外观结合到后验分布中进行定位。后验分布用粒子滤波递归采样,定位待处理图像中最可能的对应点集。结果表明,匹配的对应点可以用来形成目标的表示,该表示可以用于在新的测试图像中检测目标的实例。
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