首页> 外文会议>ASME international mechanical engineering congress and exposition >STRUCTURAL-FEATURE-ATTRIBUTE-BASED SEGMENTATION OF OPTICAL IMAGES OF BONE SLICES USING OPTIMIZED PULSE COUPLED NEURAL NETWORKS (PCNN)
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STRUCTURAL-FEATURE-ATTRIBUTE-BASED SEGMENTATION OF OPTICAL IMAGES OF BONE SLICES USING OPTIMIZED PULSE COUPLED NEURAL NETWORKS (PCNN)

机译:优化结构的脉冲耦合神经网络对骨切片光学图像的结构特征归类

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摘要

In this work, we apply an image segmentation technique that uses pulse coupled neural networks to automatically discern the micro-features of cortical bone histology. In order to properly identify them, we exploit the geometric attributes of these micro features namely shape (i.e., circular or elliptical). These micro-constituent attributes are used as targets for the fitness function of the optimization method (particle swarm optimization, PSO) that was combined with PCNN along with an adaptive threshold, (T) that finds the best value for T between two segmented regions. The result is an optimal set of PCNN parameters that was found in this work to yield good- quality segmented pulses of the various micro-features of 2 different cortical bone images.
机译:在这项工作中,我们应用了一种图像分割技术,该技术使用脉冲耦合神经网络自动识别皮质骨组织学的微观特征。为了正确识别它们,我们利用了这些微观特征的几何属性,即形状(即圆形或椭圆形)。这些微成分属性用作优化方法(粒子群优化,PSO)的适应度函数的目标,该方法与PCNN以及自适应阈值(T)相结合,该阈值在两个分段区域之间找到T的最佳值。结果是在这项工作中发现了一组最佳的PCNN参数,以产生2个不同皮质骨图像的各种微特征的高质量分段脉冲。

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