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Analysis of feature detector and descriptor combinations with a localization experiment for various performance metrics

机译:使用各种性能指标的定位实验分析特征检测器和描述符组合

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The purpose of this study is to provide a detailed performance comparison of feature detector/descriptor methods, particularly when their various combinations are used for image-matching. The localization experiments of a mobile robot in an indoor environment are presented as a case study. In these experiments, 3090 query images and 127 dataset images were used. This study includes five methods for feature detectors (features from accelerated segment test (FAST), oriented FAST and rotated binary robust independent elementary features (BRIEF) (ORB), speeded-up robust features (SURF), scale invariant feature transform (SIFT), and binary robust invariant scalable keypoints (BRISK)) and five other methods for feature descriptors (BRIEF, BRISK, SIFT, SURF, and ORB). These methods were used in 23 different combinations and it was possible to obtain meaningful and consistent comparison results using the performance criteria defined in this study. All of these methods were used independently and separately from each other as either feature detector or descriptor. The performance analysis shows the discriminative power of various combinations of detector and descriptor methods. The analysis is completed using five parameters: (i) accuracy, (ii) time, (iii) angle difference between keypoints, (iv) number of correct matches, and (v) distance between correctly matched keypoints. In a range of ${60^{circ}}$, covering five rotational pose points for our system, the FAST-SURF combination had the lowest distance and angle difference values and the highest number of matched keypoints. SIFT-SURF was the most accurate combination with a 98.41% correct classification rate. The fastest algorithm was ORB-BRIEF, with a total running time of 21,303.30 s to match 560 images captured during motion with 127 dataset images.
机译:这项研究的目的是提供特征检测器/描述符方法的详细性能比较,尤其是当它们的各种组合用于图像匹配时。作为案例研究,介绍了室内环境中移动机器人的定位实验。在这些实验中,使用了3090个查询图像和127个数据集图像。这项研究包括用于特征检测器的五种方法(加速段测试(FAST)的特征,定向FAST和旋转二进制鲁棒独立基本特征(BRIEF)(ORB),加速鲁棒特征(SURF),尺度不变特征变换(SIFT)) ,二进制健壮不变可扩展关键点(BRISK)和其他五种用于特征描述符的方法(BRIEF,BRISK,SIFT,SURF和ORB)。这些方法以23种不同的组合使用,并且可以使用本研究中定义的性能标准来获得有意义且一致的比较结果。所有这些方法均独立且彼此分开地用作特征检测器或描述符。性能分析显示了检测器和描述符方法的各种组合的区分能力。使用五个参数完成分析:(i)准确性,(ii)时间,(iii)关键点之间的角度差,(iv)正确匹配的数量以及(v)正确匹配的关键点之间的距离。在$ {60 ^ { circ}} $的范围内,涵盖我们系统的五个旋转姿势点,FAST-SURF组合具有最低的距离和角度差值以及最多的匹配关键点数。 SIFT-SURF是最准确的组合,正确分类率为98.41%。最快的算法是ORB-BRIEF,其总运行时间为21,303.30 s,以将运动期间捕获的560个图像与127个数据集图像进行匹配。

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