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Image Pattern Recognition in Natural Environment Using Morphological Feature Extraction

机译:利用形态特征提取的自然环境中图像模式识别

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摘要

The gray-scale morphological Hit-or-Miss transform is theoretically invariant to vertical translation of the input function, which is analogous to gray-value shift of the input images. Designing optimal structuring elements for the Hit-or-Miss transform operator is achieved by neural network learning methodology using a shared-weight neural network (SWNN) architecture. Early stage of the neural network system performs feature extraction using the operator, while the late stage does classification. In experimental studies, this morphological feature-based neural network (MFNN) system is applied to location of human face and automatic recognition of vehicle license plate to examine the property of the operator. The results of the experimental studies show that the gray-scale morphological Hit-or-Miss transform operator is reducing the effects of lighting variation.
机译:灰度形态Hit-或-Miss变换在理论上对输入函数的垂直平移不变,这类似于输入图像的灰度值移位。通过使用共享加权神经网络(SWNN)架构的神经网络学习方法,可以为Hit-or-Miss变换算符设计最佳的结构元素。神经网络系统的早期阶段使用运算符执行特征提取,而后期阶段则进行分类。在实验研究中,将这种基于形态特征的神经网络(MFNN)系统应用于人脸定位和车辆牌照的自动识别,以检查操作员的属性。实验研究的结果表明,灰度形态Hit-或-Miss变换算子正在减少照明变化的影响。

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