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Genetic Programming for Region Detection, Feature Extraction, Feature Construction and Classification in Image Data

机译:用于图像数据中区域检测,特征提取,特征构建和分类的遗传编程

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Image analysis is a key area in the computer vision domain that has many applications. Genetic Programming (GP) has been successfully applied to this area extensively, with promising results. High-level features extracted from methods such as Speeded Up Robust Features (SURF) and Histogram of Oriented Gradients (HoG) are commonly used for object detection with machine learning techniques. However, GP techniques are not often used with these methods, despite being applied extensively to image analysis problems. Combining the training process of GP with the powerful features extracted by SURF or HoG has the potential to improve the performance by generating high-level, domain-tailored features. This paper proposes a new GP method that automatically detects different regions of an image, extracts HoG features from those regions, and simultaneously evolves a classifier for image classification. By extending an existing GP region selection approach to incorporate the HoG algorithm, we present a novel way of using high-level features with GP for image classification. The ability of GP to explore a large search space in an efficient manner allows all stages of the new method to be optimised simultaneously, unlike in existing approaches. The new approach is applied across a range of datasets, with promising results when compared to a variety of well-known machine learning techniques. Some high-performing GP individuals are analysed to give insight into how GP can effectively be used with high-level features for image classification.
机译:图像分析是计算机视觉领域中具有许多应用程序的关键领域。遗传程序设计(GP)已成功地广泛应用于这一领域,并取得了可喜的成果。从诸如加速鲁棒特征(SURF)和定向梯度直方图(HoG)之类的方法中提取的高级特征通常用于通过机器学习技术进行对象检测。但是,尽管GP技术已广泛应用于图像分析问题,但它们并不经常与这些方法一起使用。将GP的训练过程与SURF或HoG提取的强大功能相结合,可以通过生成高级的,针对领域的功能来提高性能。本文提出了一种新的GP方法,该方法可以自动检测图像的不同区域,从这些区域中提取HoG特征,并同时发展出用于图像分类的分类器。通过扩展现有的GP区域选择方法以合并HoG算法,我们提出了一种将高级特征与GP一起用于图像分类的新颖方法。 GP具有有效探索大型搜索空间的能力,与现有方法不同,它可以同时优化新方法的所有阶段。与各种众所周知的机器学习技术相比,该新方法已应用于一系列数据集,并获得了可喜的结果。对一些高性能GP进行了分析,以深入了解GP如何与高级功能一起有效地用于图像分类。

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