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首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Catenary image segmentation using the simplified PCNN with adaptive parameters
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Catenary image segmentation using the simplified PCNN with adaptive parameters

机译:使用具有自适应参数的简化PCNN的连接图像分割

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The catenary fault detection method based on image processing technique plays an important role in the railway transportation safety system, and image segmentation is the hot and critical stage of this detection method. Conventional pulse coupled neural network (PCNN) model has too many parameters which should be set with values in advance for image segmentation. However, the setting of parameters is critical but complex task, and the segmentation effect and efficiency significantly rely on the network parameters setting. To overcome the above mentioned disadvantages, the simplified PCNN (SPCNN) model based on the conventional PCNN is introduced. First, simplify the input domain, the external input signal is directly used as the input neuron. Then the linking input and the dynamic threshold of the neuron are simplified. Furthermore, the linking coefficients of the modulation field are adaptively determined by normalized mean square error, and the iteration number is adaptively determined in accordance with the minimum cross entropy. In this simplified model, some parameters are reduced but the important mechanisms of PCNN are still remained. Finally, several sets of real-time collected catenary images are segmented by the SPCNN model with adaptive parameters. Experiments results show that the proposed method not only significantly improves image segmentation performance than the conventional image segmentation methods but also shows the continuity and integrity of the segmented images, especially for the pull rods, posts, insulators and other parts of catenary. Furthermore, it is superior to the conventional image segmentation in terms of parameters setting, visual appearance and objective evaluation criteria of VOI and PRI values. (C) 2017 Elsevier GmbH. All rights reserved.
机译:基于图像处理技术的脉冲故障检测方法在铁路运输安全系统中起重要作用,并且图像分割是该检测方法的热和临界阶段。传统的脉冲耦合神经网络(PCNN)模型具有太多参数,该参数应该是预先为图像分割的值设置的。但是,参数的设置至关重要但复杂的任务,以及分割效果和效率显着依赖于网络参数设置。为了克服上述缺点,引入了基于传统PCNN的简化PCNN(SPCNN)模型。首先,简化输入域,外部输入信号直接用作输入神经元。然后简化了链接输入和神经元的动态阈值。此外,通过归一化均方误差自适应地确定调制字段的链接系数,并且根据最小跨熵自适应地确定迭代号。在这种简化的模型中,一些参数减少,但仍然保持了PCNN的重要机制。最后,通过具有自适应参数的SPCNN模型对几组实时收集的延伸图像进行了分割。实验结果表明,该方法不仅显着提高了图像分割性能,而且还示出了分段图像的连续性和完整性,特别是对于拉杆,柱,绝缘体和囊网的其他部分。此外,就VOI和PRI值的参数设置,视觉外观和客观评估标准优于传统的图像分割优于传统的图像分割。 (c)2017年Elsevier GmbH。版权所有。

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