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Volume 39 Issue 5
Jul.  2015
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Adaptive filtering algorithm for high resolution 3-D images

  • In order to obtain high-fidelity 3-D images, an adaptive mean filtering algorithm for high resolution 3-D images was proposed. Firstly, a high-precision 3-D linear laser measuring system consisting of a laser, two high-resolution 3-D cameras, two linear motors and a computer was established to measure the texture of leather. After theoretical analysis and experimental verification of the high-resolution 3-D texture images (dots per inch 1000) collected by the measuring system, the data of high-fidelity three dimensional images after filtering were gotten. The effect of the adaptive mean filtering algorithm was compared with the effects of mean filtering method and wavelet threshold filtering method. The results show that the adaptive mean filtering algorithm can remove noise of 3-D images effectively, select the appropriate filtering window automatically, and also keep details and edge information of high resolution images. Finally, the high resolution 3-D texture images with high fidelity would be obtained. The experimental results are very helpful for denoising processing of high resolution images.
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通讯作者: 陈斌, bchen63@163.com
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    沈阳化工大学材料科学与工程学院 沈阳 110142

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Adaptive filtering algorithm for high resolution 3-D images

    Corresponding author: ZHOU Yanzhou, zhouyanzhou.optics@gmail.com
  • 1. Department of Automation, Guangdong University of Technology, Guangzhou 510006, China

Abstract: In order to obtain high-fidelity 3-D images, an adaptive mean filtering algorithm for high resolution 3-D images was proposed. Firstly, a high-precision 3-D linear laser measuring system consisting of a laser, two high-resolution 3-D cameras, two linear motors and a computer was established to measure the texture of leather. After theoretical analysis and experimental verification of the high-resolution 3-D texture images (dots per inch 1000) collected by the measuring system, the data of high-fidelity three dimensional images after filtering were gotten. The effect of the adaptive mean filtering algorithm was compared with the effects of mean filtering method and wavelet threshold filtering method. The results show that the adaptive mean filtering algorithm can remove noise of 3-D images effectively, select the appropriate filtering window automatically, and also keep details and edge information of high resolution images. Finally, the high resolution 3-D texture images with high fidelity would be obtained. The experimental results are very helpful for denoising processing of high resolution images.

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