Multi-modal robotic visual-tactile localisation and detection of surface cracks

Francesca Palermo, Liz Katherine Rincon Ardila, Changjae Oh, K. Althoefer, S. Poslad, G. Venture, I. Farkhatdinov
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引用次数: 4

Abstract

We present and validate a method to detect surface cracks with visual and tactile sensing. The proposed algorithm localises cracks in remote environments through videos/photos taken by an on-board robot camera. The identified areas of interest are then explored by a robot with a tactile sensor. Faster R-CNN object detection is used for identifying the location of potential cracks. Random forest classifier is used for tactile identification of the cracks to confirm their presences. Offline and online experiments to compare vision only and combined vision and tactile based crack detection are demonstrated. Two experiments are developed to test the efficiency of the multi-modal approach: online accuracy detection and time required to explore a surface and localise a crack. Exploring a cracked surface using combined visual and tactile modalities required four times less time than using the tactile modality only. The accuracy of detection was also improved with the combination of the two modalities. This approach may be implemented also in extreme environments since gamma radiation does not interfere with the sensing mechanism of fibre optic-based sensors.
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多模态机器人视觉触觉定位与表面裂纹检测
我们提出并验证了一种用视觉和触觉检测表面裂纹的方法。该算法通过机载机器人相机拍摄的视频/照片来定位远程环境中的裂缝。识别出感兴趣的区域,然后由带有触觉传感器的机器人探索。更快的R-CNN对象检测用于识别潜在裂缝的位置。随机森林分类器用于裂纹的触觉识别,以确认裂纹的存在。对基于视觉和基于视觉与触觉相结合的裂纹检测进行了离线和在线的对比实验。开发了两个实验来测试多模态方法的效率:在线精度检测和探索表面和定位裂纹所需的时间。使用视觉和触觉相结合的方式探索裂纹表面所需的时间比仅使用触觉方式少四倍。两种方法的结合也提高了检测的准确性。这种方法也可以在极端环境中实现,因为伽马辐射不会干扰基于光纤的传感器的传感机制。
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