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A gene expression programming approach for evolving multi-class image classifiers

机译:用于进化多类图像分类器的基因表达编程方法

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This paper presents a methodology to perform multi-class image classification using Gene Expression Programming(GEP) in both balanced and unbalanced datasets. Descriptors are extracted from images and then their dimensionality are reduced by applying Principal Component Analysis. The aspects extracted from images are texture, color and shape that are, later, concatenated in a feature vector. Finally, GEP is used to evolve trees capable of performing as classifiers using the features as terminals. The quality of the solution evolved is evaluated by the introduced Cross-Entropy-Loss-based fitness function and compared with standard fitness function (both accuracy and product of sensibility and specificity). A novel GEP function linker Softmax-based is introduced. GEP performance is compared with the obtained by classifiers with tree structure, as C4.5 and Random Forest algorithms. Results show that GEP is capable of evolving classifiers able to achieve satisfactory results for image multi-class classification.
机译:本文提出了一种使用基因表达编程(GEP)在平衡和非平衡数据集中执行多类图像分类的方法。从图像中提取描述符,然后通过应用主成分分析来降低其维数。从图像中提取的方面是纹理,颜色和形状,它们随后被连接到特征向量中。最后,GEP用于使用功能作为终端来演化能够用作分类器的树。通过引入的基于交叉熵-损失的适应度函数来评估所开发解决方案的质量,并将其与标准适应度函数(准确性和敏感性与特异性的乘积)进行比较。介绍了一种基于Softmax的新型GEP功能链接器。将GEP性能与具有树结构的分类器(如C4.5和随机森林算法)所获得的性能进行比较。结果表明,GEP能够发展分类器,从而能够对图像多分类进行满意的分类。

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