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3D keypoint detectors and descriptors for 3D objects recognition with TOF camera

机译:3D与TOF相机识别3D对象的Keypoint探测器和描述符

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The goal of this work is to evaluate 3D keypoints detectors and descriptors, which could be used for quasi real time 3D object recognition. The work presented has three main objectives: extracting descriptors from real depth images, obtaining an accurate degree of invariance and robustness to scale and viewpoints, and maintaining the computation time as low as possible. Using a 3D time-of-flight (ToF) depth camera, we record a sequence for several objects at 3 different distances and from 5 viewpoints. 3D salient points are then extracted using 2 different curvatures-based detectors. For each point, two local surface descriptors are computed by combining the shape index histogram and the normalized histogram of angles between the normal of reference feature point and the normals of its neighbours. A comparison of the two detectors and descriptors was conducted on 4 different objects. Experimentations show that both detectors and descriptors are rather invariant to variations of scale and viewpoint. We also find that the new 3D keypoints detector proposed by us is more stable than a previously proposed Shape Index based detector.
机译:这项工作的目标是评估3D关键点探测器和描述符,可用于准实时3D对象识别。提供的工作具有三个主要目标:从真实深度图像中提取描述符,从而获得准确的不变性和稳健性,以刻度和观点,并保持尽可能低的计算时间。使用3D飞行时间(TOF)深度相机,我们在3个不同的距离和5个视点录制几个物体的序列。然后使用2种基于曲率的检测器提取3D凸点。对于每个点,通过组合形状指数直方图和正常的参考特征点与其邻居的法线之间的角度的归一化直方图来计算两个局部表面描述符。两个探测器和描述符的比较在4个不同的物体上进行。实验表明,两个探测器和描述符都是不变的尺度和观点的变化。我们还发现,我们提出的新的3D Keypoints检测器比以前提出的形状指数的探测器更稳定。

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