Classification of Trained Input Images using Neural Networks

N. Sundari, D. Anandhavalli, K. Dhivyalakshmi, S. Reshma
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引用次数: 1

Abstract

Breast Cancer is considered as the most frequent cancer among women nearly 2.1 million women are affected in each year. In order to recover the scenario, various image processing algorithms are used to detect breast cancer in its initial stage. Breast cancer can be usually recognized by following methodologies such as Mammograms, MRI, Ultrasound and Biopsy. Mammogram is a preliminary diagnosis methodology in breast cancer. In the proposed method three main stages are used. In the first stage input image is preprocessed by Discrete Wavelet Transform, Gray Level Co-occurrence Matrix is used as second stage to extract features in an image and In third stage Probabilistic Neural Network is used for classification of trained input images. Finally, the percentage of affected cells by tumor is calculated by Fuzzy C Means algorithm. By using proposed method the accuracy of tumor cells detection in its preliminary stage has been improved.
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使用神经网络的训练输入图像分类
乳腺癌被认为是女性中最常见的癌症,每年有近210万女性受到影响。为了恢复场景,使用了各种图像处理算法来检测乳腺癌的初始阶段。乳腺癌通常可以通过以下方法来识别,如乳房x光检查、核磁共振检查、超声检查和活检。乳房x光检查是乳腺癌的初步诊断方法。该方法主要分为三个阶段。第一阶段对输入图像进行离散小波变换预处理,第二阶段使用灰度共生矩阵提取图像特征,第三阶段使用概率神经网络对训练好的输入图像进行分类。最后,采用模糊C均值算法计算受肿瘤影响的细胞百分比。该方法提高了肿瘤细胞早期检测的准确性。
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