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Automatic Colon Malignancy Recognition using Sobel Morphological Dilation

机译:使用Sobel&形态学扩张的自动结肠恶性肿瘤识别

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The role of digital image processing in medical science is very advantageous. Colon malignancy is one of the perilous infections which are very hazardous for human health. It starts on the large intestine and later infects other nearest organs of the body, which is lethal if left untreated. Colorectal diagnosis is very expensive if it is not treated timely, so the early phase identification of malignancy is necessary for better health. To diminishing this problem we develop an automated system for recognizing colorectal malignancy in an initial stage. The prime aspire of this framework is to inspect the colorectal CT image to identify whether the colon has malignancy or not. Usually, most of the existing techniques may distort the actual detail that creates false prediction and may reduce accuracy and precision which is very dangerous for patients but a proposed novel approach is capable of accurately detect colorectal cancer at very less processing instant. It consists of different phases namely Pre-processing, Thresholding, Sobel filter, and morphological dilation operation. Sobel algorithm executes a 2-D spatial gradient measurement on the picture and emphasizes the vicinity of high spatial frequency that corresponds to edges. It is easy to apply and gives more accurate edges information about the scene. After that, we apply a morphological operation for extracting picture elements and also advantageous for telling about object shape. The system obtained 98.48% accuracy by testing 198 colon CT samples.
机译:数字图像处理在医学科学中的作用非常有利。结肠恶性肿瘤是对人类健康非常危险的危险感染之一。它从大肠开始,后来感染身体的其他最近器官,如果没有治疗,这是致命的。结直肠诊断如果未及时治疗,则为恶性的早期阶段鉴定是更好的健康所必需的。为了减少这个问题,我们开发一个用于识别初始阶段的结肠直肠恶性肿瘤的自动化系统。该框架的主要追求是检查结肠直肠CT图像以确定结肠是否具有恶性肿瘤。通常,大多数的现有技术可能会扭曲,创建伪预测,并且可以降低准确度和精度这对患者非常危险的,但提出的新颖的方法能够以非常少的处理即时精确地检测结肠直肠癌的实际细节。它包括不同的相,即预处理,阈值,Sobel过滤器和形态扩张操作。 Sobel算法在图像上执行了2-D空间梯度测量,并强调对应于边缘的高空间频率附近。很容易申请并提供有关场景的更准确的边缘信息。之后,我们应用用于提取图像元素的形态学操作,并且还有利于讲述对象形状。通过测试198 Colon CT样品,该系统获得了98.48%的精度。

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