A comparison of an RGB-D cameras performance and a stereo camera in relation to object recognition and spatial position determination

Q4 Computer Science
Julián S. Rodríguez
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引用次数: 7

Abstract

Results of using an RGB-D camera (Kinect sensor) and a stereo camera, separately, in order to determine the 3D real position of characteristic points of a predetermined object in a scene are presented. KAZE algorithm was used to make the recognition, that algorithm exploits the nonlinear scale space through nonlinear diffusion filtering; 3D coordinates of the centroid of a predetermined object were calculated employing the camera calibration information and the depth parameter provided by a Kinect sensor and a stereo camera. Experimental results show it is possible to get the required coordinates with both cameras in order to locate a robot, although a balance in the distance where the sensor is placed must be guaranteed: no fewer than 0.8 m from the object to guarantee the real depth information, it is due to Kinect operating range; 0.5 m to stereo camera, but it must not be 1 m away to have a suitable rate of object recognition, besides, Kinect sensor has more precision with distance measures regarding a stereo camera.
RGB-D相机性能与立体相机在物体识别和空间位置确定方面的比较
给出了分别使用RGB-D摄像机(Kinect传感器)和立体摄像机确定场景中预定物体特征点的三维真实位置的结果。采用KAZE算法进行识别,该算法通过非线性扩散滤波来利用非线性尺度空间;利用摄像机标定信息和Kinect传感器和立体摄像机提供的深度参数,计算预定物体质心的三维坐标。实验结果表明,为了定位机器人,两个摄像头都可以获得所需的坐标,尽管必须保证传感器放置距离的平衡:距离物体不小于0.8 m以保证真实深度信息,这是由于Kinect的操作范围;距离立体摄像机0.5 m,但距离不能超过1 m才有合适的物体识别率,而且Kinect传感器对于立体摄像机的距离测量精度更高。
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来源期刊
Electronic Letters on Computer Vision and Image Analysis
Electronic Letters on Computer Vision and Image Analysis Computer Science-Computer Vision and Pattern Recognition
CiteScore
2.50
自引率
0.00%
发文量
19
审稿时长
12 weeks
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