Research on Reinforcement Learning algorithms in Computer Vision

Jiahui Lu, Mingyue Qin, Yuning Tong
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Abstract

As artificial intelligence technology continues to develop, reinforcement learning (RL) is evolving as a potent form of artificial intelligence. Reinforcement learning, as a subfield of machine learning, focuses on how to behave in a given situation in order to maximize the expected rewards. Due to the excellent perceptual and decision-making capabilities of RL algorithms, reinforcement learning has been widely used in various fields including medicine, finance, robotics, video games, and computer vision (CV). Among them, computer vision is a challenging and significant research subject in both engineering and science fields. Because diversity and imperfections are prominent features of the CV domain, there are numerous ways to utilize reinforcement learning to enhance CV tasks. This paper aims to introduce the fundamental concepts and methodology of reinforcement learning. Moreover, this paper details the recent applications of reinforcement learning in different branches of the CV field, and makes a comparison of the performance of the different algorithms involved.
计算机视觉中强化学习算法的研究
随着人工智能技术的不断发展,强化学习(RL)作为一种强大的人工智能形式正在发展。强化学习作为机器学习的一个子领域,关注的是在给定情况下如何行为以最大化预期奖励。由于强化学习算法出色的感知和决策能力,强化学习已被广泛应用于医学、金融、机器人、视频游戏、计算机视觉等各个领域。其中,计算机视觉在工程和科学领域都是一个具有挑战性和重要意义的研究课题。由于多样性和不完善性是CV领域的突出特征,因此有许多方法可以利用强化学习来增强CV任务。本文旨在介绍强化学习的基本概念和方法。此外,本文还详细介绍了强化学习在CV领域不同分支中的最新应用,并对不同算法的性能进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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