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Investigation of PCA as a compression pre-processing tool for X-ray image classification

机译:PCA作为X射线图像分类压缩预处理工具的研究

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Image classification has rapidly gained interest in the medical field with the ability to assist practitioners to diagnose a variety of conditions. Due to the critical nature of the application, any pre-processing function that may compromise the fitness of the classifier requires careful assessment. Image compression, albeit necessary in terms of volume-based goals, is an example of such a preprocessing function that can deeply affect data veracity. In this work, the trade-off between volume and veracity in bone fracture classification using X-ray images is investigated. The impacts of the dimensionality reduction technique-via Principal Component Analysis-as a compression tool on X-ray image classification are explored. The effects of the compression technique on the detection of fractures are assessed by evaluating how reductions in principal components of the X-ray image, and subsequently its volume, affect the accuracy of the fracture classification. Varying levels of compression are applied to both healthy and fracture image sets with tests conducted using ANFIS, SVM and ANN classifiers. Results indicate that a potentially feasible compression range exists whereby classification accuracy is acceptably diminished, after which further compression yields are marginal and classification accuracies drastically decrease. Overall results demonstrate the suitability of the method which yields compression levels of up to 94 with a corresponding minimal drop in classification accuracy of 2.
机译:图像分类在医学领域迅速引起了人们的兴趣,能够帮助从业者诊断各种疾病。由于应用程序的关键性质,任何可能影响分类器适用性的预处理功能都需要仔细评估。图像压缩,尽管在基于体积的目标方面是必要的,但这种预处理函数的一个例子可以深刻影响数据的真实性。在这项工作中,研究了使用 X 射线图像进行骨折分类中体积和准确性之间的权衡。探讨了降维技术(通过主成分分析)作为压缩工具对X射线图像分类的影响。通过评估 X 射线图像主成分的减少及其体积如何影响骨折分类的准确性,来评估压缩技术对骨折检测的影响。使用ANFIS、SVM和ANN分类器进行测试,对健康和骨折图像集应用不同程度的压缩。结果表明,存在一个潜在的可行压缩范围,即分类精度可以接受地降低,之后进一步的压缩率是微不足道的,分类精度急剧下降。总体结果证明了该方法的适用性,该方法的压缩率高达94%,分类准确率下降幅度最小,为2%。

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