Object classification for robot manipulation tasks based on learning of ultrasonic echoes

被引:0
|
作者
Caselli, S
Sillitoe, I
Visioli, A
Zanichelli, F
机构
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中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
We describe an object recognition technique based upon the extraction of simple features from the initial part of ultrasonic echoes. Features collected from a single or multiple viewpoints care classified using a decision tree. Since only the initial part of the echo is examined, the approach has potential for faster classification than alternative techniques requiring processing of the entire waveform. To emulate a workcell scenario, the approach has been verified mounting a Polaroid sensor at the wrist of a Prima 560 manipulator and implementing a simple modification of the proprietary circuitry (Polaroid Ranging Unit 6500). When tested with a set of 8 small plastic objects with regular shapes, the recognition technique has achieved classification success rates from 72% to 98% depending upon the number and selection of echoes exploited for recognition. The paper illustrates classification performance using single or multiple viewpoints tinder both axis parallel and oblique decision trees.
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页码:260 / 267
页数:8
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