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Learning Aided Structures for Image Segmentation in Complex Background

机译:复杂背景中图像分割的学习辅助结构

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Image segmentation is the fundamental step many algorithm. In this paper, a simplified neuro-computing structure in feed forward form for use in segmentation of images in complex background is proposed. The work considers the formation and training a neuro-computing structure in which the pixel values of various region of the image are used as target. The method does not require any feature extraction, labeling of objects, region growing or splitting methods to configure and train a neuro-computing structure, which for the work is a Multi Layer Perceptron (MLP) trained with (error) Back Propagation learning. The neuro-computing structure is trained with different training functions. The network is also trained with single, double and triple hidden layers. The training is also done with Generalized Regression Neural Network for different values of spread function. Then the mean square error between the output image and desired image and the time required for training has been calculated.
机译:图像分割为基本步骤的许多算法。在本文中,在用于在复杂的背景图像的分割使用前馈形式的简化中枢计算结构提出。工作考虑了形成和训练,其中,图像的各种区域的像素值被用作靶神经 - 计算结构。该方法不需要任何特征提取,标记的对象,区域生长或分裂方法来配置和培养了中枢计算结构,这对于工作是与(错误)反向传播学习培养了多层感知器(MLP)。中枢计算结构进行训练不同的训练功能。该网络还培养了单人,双人和三人隐藏层。培训还与广义回归神经网络做了扩展函数的不同值。然后,输出图像和所需的图像和用于训练所需的时间之间的均方误差已计算完毕。

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