面向计算机视觉的主动注视点方法

Dario Dematties, S. Rizzi, G. Thiruvathukal, A. Wainselboim
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引用次数: 0

摘要

本文提出了一系列实验方法,解释了主动注视点计算机视觉(CV)的新方法。这是阿根廷CONICET门多萨技术科学中心、阿贡国家实验室(ANL)和美国芝加哥洛约拉大学的研究人员共同努力的结果。目的是推进新的CV方法更符合那些在生物制剂中发现的,以便为当前CV应用面临的主要问题带来新的解决方案。基本上,这项工作增强了自我监督(SS)学习,结合注视点视觉和跳眼行为,以提高训练和计算效率,而不会显著降低性能。本文包括方法解释的概要,由于这是一项目前正在进行的工作,因此仅提供初步结果。我们还使我们的代码完全可用。1 https: / / github.com/dariodematties/Multimodal-Active-AI
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards an Active Foveated Approach to Computer Vision
In this paper, a series of experimental methods are presented explaining a new approach towards active foveated Computer Vision (CV). This is a collaborative effort between researchers at CONICET Mendoza Technological Scientific Center from Argentina, Argonne National Laboratory (ANL), and Loyola University Chicago from the US. The aim is to advance new CV approaches more in line with those found in biological agents in order to bring novel solutions to the main problems faced by current CV applications. Basically this work enhance Self-supervised (SS) learning, incorporating foveated vision plus saccadic behavior in order to improve training and computational efficiency without reducing performance significantly. This paper includes a compendium of methods’ explanations, and since this is a work that is currently in progress, only preliminary results are provided. We also make our code fully available. 1https://github.com/dariodematties/Multimodal-Active-AI
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