深度学习在目标检测中的最新进展综述

Muhammad Fahad Safdar, Hana Sharif, Faisal Rehman, Zahid Bilal, Saqlain Ahmad, Hadia Maqsood
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引用次数: 0

摘要

计算机视觉为计算机系统提供了一种解读周围物体的方法,这在多年来一直被认为是一个关键问题。有相当多的技术被设计用于对象检测和深度学习,但近年来大多数研究都集中在深度学习上。视觉目标检测包括许多识别模式任务,如图像分类。本文旨在回顾一种视觉分析方法,以便更好地理解、识别和清理对象检测框架,以及一些因素(如采样策略、特征学习、检测器架构、提案生成等)对视觉对象检测的影响,并特别参考检测组件、学习策略及其应用以及基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review of Recent Advances in Deep Learning for Object Detection
Computer Vision has given a way for computer systems to see by way of deciphering the surrounding objects, which has been considered a crucial problem over the years. There are quite a number of techniques devised for object detection and deep learning, but most of the research has been focused on deep learning in recent years. Visual object detection covers numerous recognition pattern tasks like image classification. This article aims to review a visual analytics approach for better understanding, identifying, and cleansing object detection frameworks and the effects of some factors such as sampling strategies, feature learning, detector architectures, proposal generation, etc., on visual object detection with special reference to detection components, learning strategies, and their applications along with benchmarks.
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