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Image classification and recognition method to mechanical parts based on fractal dimension

机译:基于分形维数的机械零件图像分类识别方法

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摘要

Complex mechanical parts have characteristics of irregularity and certain statistical self-similarity, which can be described by fractal dimension. And the values of their fractal dimension can be used as an measurement to classify and recognize the mechanical parts. In addition, the values can guide robots to grab parts. However, the image obtained by a vision system, which contains part images main image and image background will affect the calculation of fractal dimension of main images. In order to solve the problem, an improved differential box-counting method is designed in this paper. The fractal dimension of part images which has been cut and rotated can be calculated using this differential box- counting method. The experimental result shows that the improved differential box-counting method can calculate the fractal dimension of different size-length images, and the values are more stable. The improved method solves the problem that traditional algorithm can only calculate the fractal dimension of image which side length is integer power of 2.
机译:复杂的机械零件具有不规则性和一定的统计自相似性,可以用分形维数来描述。分形维数的值可以用作对机械零件进行分类和识别的度量。另外,这些值可以指导机器人抓取零件。然而,由视觉系统获得的包含部分图像主图像和图像背景的图像将影响主图像的分形维数的计算。为了解决这个问题,本文设计了一种改进的差分盒计数方法。可以使用这种差分盒计数方法来计算已裁切和旋转的零件图像的分形维数。实验结果表明,改进的差分盒计数法可以计算出不同尺寸长度的图像的分形维数,且数值更稳定。改进后的方法解决了传统算法只能计算边长为2的整数次幂的图像的分形维数的问题。

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