2010 IEEE International Conference on Robotics and Automation 2010
DOI: 10.1109/robot.2010.5509197
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Object modeling using a ToF camera under an uncertainty reduction approach

Abstract: Abstract-Time-of-Flight (ToF) cameras deliver 3D images at 25 fps, offering great potential for developing fast object modeling algorithms. Surprisingly, this potential has not been extensively exploited up to now. A reason for this is that, since the acquired depth images are noisy, most of the available registration algorithms are hardly applicable. A further difficulty is that the transformations between views are in general not accurately known, a circumstance that multi-view object modeling algorithms do … Show more

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Cited by 36 publications
(40 citation statements)
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“…At closer distances, ToF cameras have been applied to object modeling [5,6], precise surface reconstruction [7], and to grasp known [8] and unknown [9] objects. We focus our review on two complementary areas: scene-related tasks and object-related tasks.…”
Section: Using Tof Cameras In Robotic Manipulation Tasksmentioning
confidence: 99%
See 3 more Smart Citations
“…At closer distances, ToF cameras have been applied to object modeling [5,6], precise surface reconstruction [7], and to grasp known [8] and unknown [9] objects. We focus our review on two complementary areas: scene-related tasks and object-related tasks.…”
Section: Using Tof Cameras In Robotic Manipulation Tasksmentioning
confidence: 99%
“…A classical solution in the area of object modeling is the use of calibrated stereo rigs. Therefore, initial works were devoted to their comparison with [37] Dynamic object detection and classification Color and light independence PMD Hussmann and Liepert [38] Object pose Easy object/background segmentation PMD Guomundsson et al [39] Known object pose estimation Light independent / Absolute scale SR3 Beder et al [40] Surface reconstruction using patchlets ToF easily combines with stereo PMD Fuchs and May [7] Precise surface reconstruction 3D at high rate SR3/O3D100 (Depth) Dellen et al [5] 3D object reconstruction 3D at high rate SR3 (Depth) Foix et al [6] Kuehnle et al [8] Object recognition for grasping 3D allow geometric primitives search SR3 Grundmann et al [41] Collision free object manipulation 3D at high rate SR3 + stereo Reiser and Kubacki [42] Position based visual servoing 3D is simply obtained / No model needed SR3 (Depth) Gachter et al [43] Object part detection for classification 3D at high rate SR3 Shin et al [44] SR2 Klank et al [45] Mobile manipulation Easy table/object segmentation SR4 Marton et al [46] Object categorization ToF easily combines with stereo SR4 + color Nakamura et al [47] Mobile manipulation Easy table segmentation SR4 + color Saxena et al [9] Grasping unknown objects 3D at high rate SR3 + stereo Zhu et al [48] Short range depth maps ToF easily combines with stereo SR3 + stereo Lindner et al [49] Object segmentation for recognition Easy color registration PMD + color camera Fischer et al [50] Occlusion handling in virtual objects 3D at high rate PMD + color camera…”
Section: Object-related Tasksmentioning
confidence: 99%
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“…However, the basic ICP method [17] is a pairwise matching algorithm which does not take into account past measurements [18,6], hence the error starts to propagate. The ICP algorithm has been previously combined with Kalman filtering for object reconstruction [19]. However, in this case, the background was removed, leaving only the target object.…”
Section: Related Workmentioning
confidence: 99%