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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Object recognition using local invariant features for robotic applications: A survey
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Object recognition using local invariant features for robotic applications: A survey

机译:使用局部不变特征进行机器人应用的物体识别:一项调查

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The main goal of this survey is to present a complete analysis of object recognition methods based on local invariant features from a robotics perspective; a summary which can be used by developers of robot vision applications in the selection and development of object recognition systems. The survey includes a brief description of the main approaches reported in the literature, with more specific analyses of local interest point computation methods, local descriptor computation and matching methods, and geometric verification methods. Different methods are analyzed by considering the main requirements of robotics applications, such as real-time operation with limited on-board computational resources, and constrained observational conditions derived from the robot geometry (e.g. limited camera resolution). In addition, various object recognition systems are evaluated in a service-robot domestic environment, where the final task to be performed by a service robot is the manipulation of objects. It can be concluded from the results reported that (i) the most suitable keypoint detectors are ORB, BRISK, Fast Hessian, and DoG, (ii) the most suitable descriptors are ORB, BRISK, SIFE, and SURF, (iii) the final performance of object recognition systems using local invariant features under real-world conditions depends strongly on the geometric verification methods being used, and (iv) the best performing object recognition systems are built using ORB-ORB and DoG-SIFT keypoint-descriptor combinations. ORB-ORB based systems are faster, while DoG-SIFT are more robust to real-world conditions. (C) 2016 Elsevier Ltd. All rights reserved.
机译:这项调查的主要目的是从机器人的角度全面介绍基于局部不变特征的对象识别方法;可以由机器人视觉应用程序的开发人员在对象识别系统的选择和开发中使用的摘要。该调查包括对文献中报道的主要方法的简要描述,并对本地兴趣点计算方法,本地描述符计算和匹配方法以及几何验证方法进行了更具体的分析。通过考虑机器人应用程序的主要要求来分析不同的方法,例如使用有限的机载计算资源进行实时操作以及从机器人的几何形状得出的受约束的观察条件(例如有限的摄像头分辨率)。另外,在服务机器人家庭环境中评估各种对象识别系统,其中服务机器人要执行的最终任务是对象的操纵。从报告的结果可以得出结论:(i)最合适的关键点检测器是ORB,BRISK,Fast Hessian和DoG,(ii)最合适的描述符是ORB,BRISK,SIFE和SURF,(iii)最后在实际条件下使用局部不变特征的对象识别系统的性能在很大程度上取决于所使用的几何验证方法,并且(iv)使用ORB-ORB和DoG-SIFT关键点-描述符组合构建性能最佳的对象识别系统。基于ORB-ORB的系统速度更快,而DoG-SIFT对现实条件则更健壮。 (C)2016 Elsevier Ltd.保留所有权利。

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