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Using entropy information measures for edge detection in digital images

机译:使用熵信息度量进行数字图像边缘检测

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Shannon information entropy measures were used as filters of different kernel sizes to detect edges in digital images. The concept is based on communication theory with splitting of edge detection kernel into source and destination parts. The arbitrary shape of the kernel parts and the fact that information filter output is a real number with reduced problem of edge's continuity represents the major advantage of this approach. The results are compared with traditional edge detection algorithms like Sobel to illustrate performance and sensitivity of the information entropy filters. Besides the well known test image Lena, the real life examples are taken from medical X-Ray imaging of knee joints in order to illustrate the algorithm performance on real data.
机译:香农信息熵度量被用作不同核大小的过滤器,以检测数字图像中的边缘。该概念基于通信理论,将边缘检测内核分为源部分和目标部分。核部分的任意形状以及信息过滤器输出是实数并且减少了边缘连续性的事实代表了该方法的主要优势。将结果与传统边缘检测算法(如Sobel)进行比较,以说明信息熵过滤器的性能和灵敏度。除了众所周知的测试图像Lena之外,真实生活中的示例还取自膝关节的医学X射线成像,以说明算法在真实数据上的性能。

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