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Image thresholding segmentation method based on minimum square rough entropy

机译:基于最小平方粗糙熵的图像阈值分割方法

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Image thresholding based on rough entropy is an efficient image segmentation technique. The optimal thresholds of the existing exponential and logarithmic rough entropy thresholding segmentation algorithms have unclear physical meaning. In this paper, a new form of square rough entropy is defined to measure the roughness in an image, and the corresponding image thresholding segmentation algorithm is proposed. The novel square rough entropy has good properties and simple computation. In the proposed thresholding algorithm, the optimal threshold is at the boundary between the object and the background of an image. This process is consistent with the expectation of image bi-level thresholding segmentation. To effectively granulate the image, a granule size selection method based on the homogeneity histogram is proposed, which is helpful in taking care of small objects and local variations of the images. The proposed thresholding method is evaluated by comparison with other three existing rough entropy based thresholding methods and three state-of-the-art image thresholding methods both qualitatively and quantitatively, using the natural images, the non-destructive testing images and an infrared video sequence from the OTCBVS Benchmark Data set. The comparison confirms the effectiveness of the proposed algorithm that not only is simple in form and clear in meaning, but also has good segmentation effect. (C) 2019 Elsevier B.V. All rights reserved.
机译:基于粗糙熵的图像阈值化是一种有效的图像分段技术。现有指数和对数粗糙熵阈值阈值分割算法的最佳阈值具有不明确的物理含义。在本文中,定义了一种新的方形粗糙熵以测量图像中的粗糙度,并且提出了相应的图像阈值分割算法。新颖的平方粗糙熵具有良好的性能和简单的计算。在所提出的阈值算法中,最佳阈值位于对象之间的边界和图像的背景之间。该过程与图像双级别阈值分割的期望一致。为了有效地造粒图像,提出了一种基于均匀性直方图的颗粒尺寸选择方法,这有助于照顾图像的小物体和图像的局部变化。通过与其他三个现有的粗糙熵基于基于阈值处理方法和三种最新的图像阈值来评估所提出的阈值化方法,与定性和定量地,使用自然图像,非破坏性测试图像和红外视频序列从OTCBVS基准数据集。比较证实了所提出的算法的有效性,不仅简单的形式和清晰的意义,而且还具有良好的分割效果。 (c)2019年Elsevier B.V.保留所有权利。

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