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A Novel Hybrid Approach of Bayesian Theory and Neural Networks for Video Image Segmentation

机译:贝叶斯理论与神经网络混合的视频图像分割新方法

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Video image segmentation is essential for image analysis and the target recognition. In this study, a Bayesian theory and neural networks based image processing method was applied to video image segmentation. Firstly, a neural network with an incremental input node was designed for approximating to the posterior probability, which avoided the difficulty of estimation of class-conditional probability and could be applied to the occasions when prior probability changed. Secondly, the location information in the estimation of prior probability played a role in inhibiting the over segmentation, and made the classifier more robust and flexible. Finally, a variable-step algorithm using the "Center of gravity" as the starting point for moving target diffused searching was developed. This algorithm could not only reduce noise, but also avoided the classification of each pixel in every video image, which facilitated to improve the performance of real-time.
机译:视频图像分割对于图像分析和目标识别至关重要。在这项研究中,基于贝叶斯理论和神经网络的图像处理方法被应用于视频图像分割。首先,设计了一个具有增量输入节点的神经网络,用于逼近后验概率,从而避免了估计类条件概率的困难,并且可以应用于先验概率发生变化的情况。其次,位置信息在先验概率估计中起到了抑制过度分割的作用,并使分类器更加健壮和灵活。最后,开发了一种以“重心”为起点的可变步长算法,用于移动目标扩散搜索。该算法不仅可以减少噪声,而且避免了每个视频图像中每个像素的分类,有利于提高实时性能。

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