基于关节向内不动概率神经网络分类器的手术急性脑肿瘤识别

V. Anitha
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引用次数: 0

摘要

脑瘤必须提前预测,以避免死亡的风险。为了实现有效的检测,需要采用双层肿瘤区域提取的自适应分割方法。该框架通过融合中值进行预处理以避免噪声的产生,维纳滤波还采用自适应柱c均值算法获得基本特征集,从而减少了处理时间。因此,获得的基本特征集然后通过始终不渝的PNN(概率神经网络)分类器进行分类,其中首先进行两次分类,以区分良性或恶性,随后对不同类型的脑肿瘤进行分类,如星形细胞瘤,脑膜瘤,胶质母细胞瘤和髓母细胞瘤。由于PNN由于距离因子引起的非线性耗费较多的计算时间,通过引入径向基函数来解决,使得LS-SVM(最小二乘支持向量机)作为距离因子为线性因子。从而进一步减少了计算时间。
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An Operative Acute Brain Tumor Recognition by Jointure Inward Unswerving Probabilistic Neural Network Classifier
Brain tumors have to be predicted earlier to avoid the risk of being mortal. For an effective detection an adaptive segmentation with two-tier tumors region extraction is needed. This framework offers preprocessing to avoid noise occurrence by fusing median and wiener filter also utilizes adaptive pillar C-means algorithm for obtaining the essential feature set thus the processing time is reduced. Thus the attained essential feature sets are then classified by means of unswerving PNN (Probabilistic Neural network) classifier where classification is done twice initially to classify whether benign or malignant, Sub sequently to classify different sorts of brain tumor such as Astrocytoma, Meningioma, Glioblastoma and Medulloblastoma. Since the non-linearity of PNN due to distance factor consumes more computation time which is tackled by intruding the radial basis function resulted in LS-SVM (Least Square-Support Vector Machine) as a distance factor which is linear one. Thus computation time is further reduced.
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