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Edge detection in electron microscopy biological images using statistical dispersion

机译:使用统计色散的电子显微镜生物学图像中的边缘检测

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During the last few decades, there has been a tremendous development in the field of biological sciences. With this, there is an increasing demand for analyzing the molecular or cellular features of the cell in the images, acquired with the electron microscopes (EM). However, despite significant progress in image processing, the efficient detection of features and edges in biological images is still a challenging task due to the presence of minute structures with low intensity variation, compared with the background. In this paper, a novel algorithm for edge detection in electron microscopy biological image is proposed. The edge detector is based on the statistical dispersion of D8 pixels followed by an edge thinning operation. The proposed algorithm has been compared with other state-of-art edge detectors viz. Sobel's and Canny's edge detectors and results suggest that the proposed scheme perform better in detecting the significant edges in Tobacco Mosaic Virus (TMV; scanning-transmission electron microscopy image) and Virus Like Particles (VLPs; transmission electron microscopy image); used as test images in the present study. Experimental results (in terms of Pratt's figure of merit) also suggest that the proposed algorithm is more robust to noise when compared to Sobel's or Canny's edge detector. Consequently, the proposed algorithm can operate efficiently in a noisier environment, compared to Sobel's or Canny's edge detector.
机译:在过去的几十年中,生物科学领域有了长足的发展。因此,对用电子显微镜(EM)采集的图像中的细胞分子或细胞特征进行分析的需求日益增长。然而,尽管在图像处理方面取得了重大进展,但与背景相比,由于存在具有低强度变化的微小结构,因此有效检测生物图像中的特征和边缘仍然是一项艰巨的任务。本文提出了一种新的电子显微镜生物图像边缘检测算法。边缘检测器基于D8像素的统计色散,然后进行边缘细化操作。所提出的算法已经与其他现有技术的边缘检测器进行了比较。 Sobel和Canny的边缘检测器和结果表明,该方案在检测烟草花叶病毒(TMV;扫描透射电子显微镜图像)和病毒样颗粒(VLP;透射电子显微镜图像)中的显着边缘方面表现更好。在本研究中用作测试图像。实验结果(根据Pratt的品质因数)还表明,与Sobel或Canny的边缘检测器相比,该算法对噪声的鲁棒性更高。因此,与Sobel或Canny的边缘检测器相比,所提出的算法可以在嘈杂的环境中高效运行。

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