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An Automatic Feature Extraction Approach to Image Classification Using Genetic Programming

机译:基于遗传规划的图像特征自动提取方法

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Feature extraction is an essential process for image data dimensionality reduction and classification. However, feature extraction is very difficult and often requires human intervention. Genetic Programming (GP) can achieve automatic feature extraction and image classification but the majority of existing methods extract low-level features from raw images without any image-related operations. Furthermore, the work on the combination of image-related operators/descriptors in GP for feature extraction and image classification is limited. This paper proposes a multi-layer GP approach (MLGP) to performing automatic high-level feature extraction and classification. A new program structure, a new function set including a number of image operators/descriptors and two region detectors, and a new terminal set are designed in this approach. The performance of the proposed method is examined on six different data sets of varying difficulty and compared with five GP based methods and 42 traditional image classification methods. Experimental results show that the proposed method achieves better or comparable performance than these baseline methods. Further analysis on the example programs evolved by the proposed MLGP method reveals the good interprotability of MLGP and gives insight into how this method can effectively extract high-level features for image classification.
机译:特征提取是图像数据降维和分类的重要过程。但是,特征提取非常困难,并且通常需要人工干预。遗传编程(GP)可以实现自动特征提取和图像分类,但是大多数现有方法从原始图像中提取低级特征,而无需任何与图像相关的操作。此外,GP中用于特征提取和图像分类的图像相关运算符/描述符的组合工作受到限制。本文提出了一种多层GP方法(MLGP)来执行自动高级特征提取和分类。用这种方法设计了一个新的程序结构,一个新的功能集(包括多个图像运算符/描述符和两个区域检测器)以及一个新的终端集。在不同难度的六个不同数据集上检查了该方法的性能,并与五种基于GP的方法和42种传统图像分类方法进行了比较。实验结果表明,所提出的方法比这些基线方法具有更好的性能或可比的性能。对由所提出的MLGP方法演变而来的示例程序的进一步分析揭示了MLGP的良好互操作性,并深入了解了该方法如何可以有效地提取用于图像分类的高级特征。

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