Impact of Pixel Scaling on Classification Accuracy of Dermatological Skin Disease Detection

Afiz Adeniyi Adeyemo, S. Bashir, A. Mohammed, Opeyemi O. Abisoye
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引用次数: 1

Abstract

Images are made up of many features on which the performance of the system used in processing them depends. Image pixel values are one of such important features which are often not considered. This study investigates the importance of image preprocessing using some calculated statistics on the pixels of skin images in classifying images using HAM10000 dataset. Image pixel values make a great impact on the classification performance of Convolutional Neural Network (CNN) based image classifiers. In this study, the ‘original pixel values’ of the skin images are used to train three carefully designed CNN architectures. The designed architectures are further trained with some calculated statistical values using ‘global centering’, ‘local centering’, ‘dividing pixel values by the mean’ and ‘root of the division’ techniques of data normalization. The results obtained have shown that, out of the five different forms of values used in training the architectures, the CNNs trained with the original (unscaled) image pixel values perform below those trained with calculated statistics that are computed on the image pixel values.
像素缩放对皮肤病检测分类精度的影响
图像由许多特征组成,用于处理图像的系统的性能取决于这些特征。图像像素值就是其中一个经常被忽略的重要特征。本研究通过对皮肤图像像素的计算统计,探讨了图像预处理在HAM10000数据集图像分类中的重要性。图像像素值对基于卷积神经网络(CNN)的图像分类器的分类性能影响很大。在本研究中,使用皮肤图像的“原始像素值”来训练三种精心设计的CNN架构。使用数据归一化的“全局定心”、“局部定心”、“按均值除像素值”和“除法的根”技术,对设计的结构进行进一步的统计值训练。得到的结果表明,在用于训练体系结构的五种不同形式的值中,使用原始(未缩放)图像像素值训练的cnn的性能低于使用基于图像像素值计算的统计量训练的cnn。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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