A. Mohapatra, Sunita Sarangi, S. Patnaik, S. Sabut
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引用次数: 3
摘要
角点检测和特征提取是物体识别和跟踪等计算机视觉问题的重要方面。特征检测器,如尺度不变特征变换(SIFT)产生高质量的特征,但在实时应用中使用计算量很大。FAST (Features from Accelerated Segment Test)检测器在识别目标时只提取角点信息,从而提高了特征计算速度。本文通过比较角点检测器和特征提取器图像检测器的特点,从效率、质量和鲁棒性等方面分析了有效的目标检测算法。仿真结果表明,与传统的SIFT算法相比,基于FAST角点检测器的目标识别系统具有更快的速度和更低的性能退化。SIFT方法提取2169个关键点,平均寻找关键点的时间约为0.116秒。类似地,在阈值为30的情况下,FAST方法检测1714个关键点时找到拐角点的平均时间为0.651秒。因此,FAST方法检测角点的速度更快,图像质量更好,用于物体识别。
Comparative Study of Corner and Feature Extractors for Real-Time Object Recognition in Image Processing
Corner detection and feature extraction are essential aspects of computer vision problems such as object recognition and tracking. Feature detectors such as Scale Invariant Feature Transform (SIFT) yields high quality features but computationally intensive for use in real-time applications. The Features from Accelerated Segment Test (FAST) detector provides faster feature computation by extracting only corner information in recognising an object. In this paper we have analyzed the efficient object detection algorithms with respect to efficiency, quality and robustness by comparing characteristics of image detectors for corner detector and feature extractors. The simulated result shows that compared to conventional SIFT algorithm, the object recognition system based on the FAST corner detector yields increased speed and low performance degradation. The average time to find keypoints in SIFT method is about 0.116 seconds for extracting 2169 keypoints. Similarly the average time to find corner points was 0.651 seconds for detecting 1714 keypoints in FAST methods at threshold 30. Thus the FAST method detects corner points faster with better quality images for object recognition.