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An improved evolution-constructed (iECO) features framework: Distribution statement A: Approved for public release; distribution is unlimited

机译:改进的演进构建(iECO)功能框架:发行声明A:已批准公开发布;已发布。发行是无限的

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In image processing and computer vision, significant progress has been made in feature learning for exploiting important cues in data that elude non-learned features. While the field of deep learning has demonstrated state-of-the-art performance, the Evolution-COnstructed (ECO) work of Lillywhite et. al has the advantage of interpretability, and it does not predispose the solution to one of convolution. This paper presents a novel approach for extending the ECO framework. We achieve this through two overarching ideas. First, we address a potential major shortcoming of ECO features - the “features” themselves. The so-called ECO features are simply a transformed image that has been unrolled into a large one dimensional vector. We propose employing feature descriptors to extract pertinent information from the ECO imagery. Furthermore, it is our hypothesis that there exists a unique set of transforms for each feature descriptor used on a given problem domain that leads to the descriptors extracting maximal discriminative information. Second, we introduce constraints on each individual's chromosome to promote population diversity and prevent infeasible solutions. We show through experiments that our proposed iECO framework results in, and benefits from, a unique series of transforms for each descriptor being learned and maintaining population diversity.
机译:在图像处理和计算机愿景中,在利用摘要非学习特征的数据中利用重要提示的特征学习中取得了重大进展。虽然深度学习领域已经证明了最先进的表现,但LillyWhite等的进化构建(Eco)工作。 AL具有可解释性的优势,并且不会使解决方案达到卷积之一。本文介绍了扩展生态框架的新方法。我们通过两个总体想法实现这一目标。首先,我们解决了生态特征的潜在主要缺点 - “功能”本身。所谓的ECO特征只是一种已经展开到大一维向量的变换图像。我们建议采用功能描述符从ECO图像中提取相关信息。此外,我们的假设是,对于给定的问题域上使用的每个特征描述符存在一组唯一的变换,其导致描述符提取最大判别信息。其次,我们对每个人的染色体引入限制,以促进人口多样性并防止不可行的解决方案。我们通过实验表明,我们提出的IECO框架导致和福利,这是一个独特的各种转换,用于所学习和维护人口多样性的每个描述符。

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