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A Comprehensive Review of Deep Reinforcement Learning for Object Detection

机译:对物体检测深度加固学习的全面综述

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Object detection is one of the most fundamental and significant problems in computer vision, and has received great attention in recent years. At the same time, it is applied to various fields, such as Large image processing and Abstract-Object Detection. The aim of Object detection is detecting an instance of the visual certain class (such as humans, bikes) in digital images. Deep Reinforcement Learning (DRL), as a modern machine learning technology, has been greatly inspired by deep learning and reinforcement learning. DRL has both their advantages, excellent perception, and decision-making ability. In this work, we aim to provide a comparative review of deep reinforcement learning for object detection tasks to place different approaches in context.
机译:对象检测是计算机视觉中最基本和最大的问题之一,近年来受到了极大的关注。 同时,它应用于各种领域,例如大图像处理和抽象对象检测。 物体检测的目的是在数字图像中检测视觉某些类(如人类,自行车)的实例。 深增强学习(DRL)作为一种现代化的机器学习技术,受到深入学习和加强学习的热度。 DRL具有它们的优势,感知和决策能力。 在这项工作中,我们的目标是对对象检测任务进行深度加强学习的比较审查,以便在上下文中放置不同的方法。

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