首页> 外文期刊>Journal of computer sciences >BRAIN TUMOR CLASSIFICATION BASED ON CLUSTERED DISCRETE COSINE TRANSFORM IN COMPRESSED DOMAIN | Science Publications
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BRAIN TUMOR CLASSIFICATION BASED ON CLUSTERED DISCRETE COSINE TRANSFORM IN COMPRESSED DOMAIN | Science Publications

机译:压缩域中基于离散离散余弦变换的脑肿瘤分类科学出版物

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> This study presents a novel method to classify the brain tumors by means of efficient and integrated methods so as to increase the classification accuracy. In conventional systems, the problem being the same to extract the feature sets from the database and classify tumors based on the features sets. The main idea in plethora of earlier researches related to any classification method is to increase the classification accuracy.The actual need is to achieve a better accuracy in classification, by extracting more relevant feature sets after dimensionality reduction. There exists a trade-off between accuracy and the number of feature sets. Hence the focus in this study is to implement Discrete Cosine Transform (DCT) on the brain tumor images for various classes. Using DCT, by itself, it offers a fair dimension reduction in feature sets.Later on, sequentially K-means algorithm is applied on DCT coefficients to cluster the feature sets. These cluster information are considered as refined feature sets and classified using Support Vector Machine (SVM) is proposed in this study. This method of using DCT helps to adjust and vary the performance of classification based on the count of the DCT coefficients taken into account. There exists a good demand for an automatic classification of brain tumors which grealtly helps in the process of diagnosis. In this novel work, an average of 97% and a maximum of 100% classification accuracy has been achieved. This research is basically aiming and opening a new way of classification under compressed domain. Hence this study may be highly suitable for diagnosing under mobile computing and internet based medical diagnosis.
机译: >这项研究提出了一种通过有效和综合的方法对脑肿瘤进行分类的新方法,以提高分类的准确性。在常规系统中,从数据库中提取特征集并基于特征集对肿瘤进行分类的问题是相同的。与任何分类方法有关的大量早期研究的主要思想是提高分类精度。实际需求是通过在降维后提取更多相关特征集来实现更好的分类精度。在准确性和功能集数量之间需要权衡。因此,本研究的重点是对各种类别的脑肿瘤图像实施离散余弦变换(DCT)。单独使用DCT可以减少特征集的维数,随后对DCT系数应用顺序K均值算法对特征集进行聚类。这些集群信息被认为是经过精炼的特征集,并使用支持向量机(SVM)进行了分类。使用DCT的这种方法有助于根据考虑的DCT系数的计数来调整和改变分类的性能。对脑肿瘤的自动分类有很好的需求,这在诊断过程中有很大的帮助。在这项新颖的作品中,平均分类精度达到97%,最大分类精度达到100%。这项研究的主要目的是为压缩域下的分类开辟一种新途径。因此,该研究可能非常适合在移动计算和基于Internet的医学诊断下进行诊断。

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