使用奇点形状增强特征的图像数据库,以提高机器学习能力

N.M. Sirakov, A. Bowden
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摘要

本文的主要目的是介绍一个图像数据库资源库,其特征通过嵌入式向量场(VF)特征进行增强。该库旨在为用户提供可增强机器学习(ML)分类的图像数据库。此外,还提供了六个向量场,用户可以借助名为 ELPAC 的软件将其嵌入到自己的图像数据库中。其中三个 VF 会生成真实形状的奇异点(SP):弹起点、下沉点和鞍点。其他三个 VF 生成七种奇异点,包括实形奇异点和四种复形奇异点:排斥和吸引(出和入)螺旋以及顺时针和逆时针轨道(中心)。通过使用存储库,本文根据图像对象定义了 SPs 的位置,并在将不同的 VF 嵌入同一图像时定义了 SPs 形状之间的映射。接下来,本文将向用户推荐如何选择最合适的 VF 嵌入到图像数据库中,从而使增强的 SP 形状增强 ML 分类。文中展示了嵌入 VF 的图像示例,以说明、支持和验证理论结论。因此,本文的贡献在于推导出图像中的 SP 位置;不同 VF 的 SP 之间的映射;以及 VF 中图像和图像数据库印记的定义。用嵌入式 VF 对图像数据库进行分类的优势在于,新数据库可以增强和改善 ML 分类统计,这就促使我们设计存储库,使其包含用 VF 特征增强的图像特征。
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Image Databases with Features Augmented with Singular-Point Shapes to Enhance Machine Learning
The main objective of this paper is to present a repository of image databases whose features are augmented with embedded vector field (VF) features. The repository is designed to provide the user with image databases that enhance machine learning (ML) classification. Also, six VFs are provided, and the user can embed them into her/his own image database with the help of software named ELPAC. Three of the VFs generate real-shaped singular points (SPs): springing, sinking, and saddle. The other three VFs generate seven kinds of SPs, which include the real-shaped SPs and four complex-shaped SPs: repelling and attracting (out and in) spirals and clockwise and counterclockwise orbits (centers). Using the repository, this work defines the locations of the SPs according to the image objects and the mappings between the SPs’ shapes if separate VFs are embedded into the same image. Next, this paper produces recommendations for the user on how to select the most appropriate VF to be embedded in an image database so that the augmented SP shapes enhance ML classification. Examples of images with embedded VFs are shown in the text to illustrate, support, and validate the theoretical conclusions. Thus, the contributions of this paper are the derivation of the SP locations in an image; mappings between the SPs of different VFs; and the definition of an imprint of an image and an image database in a VF. The advantage of classifying an image database with an embedded VF is that the new database enhances and improves the ML classification statistics, which motivates the design of the repository so that it contains image features augmented with VF features.
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