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Detection of brain tumor using k-means segmentation based on object labeling algorithm

机译:基于对象标记算法的K均分割检测脑肿瘤

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Diagnostic imaging is a strategy that is generally used to make images of the human body for medical and analysis purposes. A cerebrum tumor is the gathering of an unnecessary and unusual development of the cell in the brain. A brain cancer is the reason of the death among children and adults. A brain tumor is an addition of cells that grows out of control of the common forces that increases. Consistently more than 2 lack people in the United States have analyzed medical image processing has been quickly developing and testing field in the current decades. A cerebrum tumor is a genuine life weakening disease with an unnecessary or auxiliary brain cancer [18]. Brain cancer stays a standout along with the most severe types of tumor, with a normal survival time of one to two years. The cancer might be essential or auxiliary. Kind is the essential cerebrum tumor and threatening is the optional brain tumor. Essential brain tumor (the tumor created in the cerebrum). A malignant tumor is riskier. A malignant brain tumor extends in other brain tissues. Brain tumor partition is still a challenging task for the uncertain appearance and shape of the brain tumor. In our approach, detection of Brain cancer utilizing k-means partition that comprises of a system from a morphological operation, Segmentation, and Detection with object labeling algorithm as its final tumor area. The authors have to present basics of image processing. Our main purpose is to identify the cancer from MRI Images. Author proposing another system for position of cerebrum tumor utilizing segmentation based on object labeling algorithm. In many past papers utilized object labeling algorithm, it gives a good result for object detection so we combine two methods k-means and object labeling for tumor detection. Processing techniques involve five stages namely Image Pre-Processing, Morphological opening, Image Segmentation and Object labeling algorithm.
机译:诊断成像是一种策略,其通常用于制造人体的图像以进行医学和分析。大脑肿瘤是大脑中细胞不必要和不寻常的发育的聚集。脑癌是儿童和成人死亡的原因。脑肿瘤是一种添加细胞,其远离增加的常见力。始终如一的超过2缺乏美国的人分析了医学图像处理一直在当前几十年中的开发和测试领域。大脑肿瘤是一种真正的寿命弱化疾病,不必要或辅助脑癌[18]。脑癌突然伴随着最严重的肿瘤,正常存活时间一到两年。癌症可能是必不可少的或辅助的。种类是必不可少的脑肿瘤,威胁是可选的脑肿瘤。基本脑肿瘤(在大脑中产生的肿瘤)。恶性肿瘤是风险的。恶性脑肿瘤在其他脑组织中延伸。脑肿瘤分区对脑肿瘤的不确定外观和形状仍然是一个具有挑战性的任务。在我们的方法中,利用K-means分区检测脑癌,其包括来自形态学操作,分段和检测的系统,以对象标记算法作为其最终肿瘤区域。作者必须呈现图像处理的基础知识。我们的主要目的是从MRI图像识别癌症。作者提出了一种基于对象标记算法利用分割的脑肿瘤定位的另一个系统。在许多过去的论文中利用对象标记算法,它给出了对象检测的良好结果,因此我们组合了两种方法K-means和对象标记进行肿瘤检测。处理技术涉及五个阶段即可图像预处理,形态开口,图像分割和对象标记算法。

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