Image preprocessor of model-based vision system for assembly robots

H. Moribe, M. Nakano, T. Kuno, J. Hasegawa
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引用次数: 11

Abstract

A special purpose image preprocessor for the visual system of assembly robots has been developed. The main function unit is composed of look-up tables to utilize the advantage of semiconductor memory for large scale integration, high speed and low price. More than one units may be operated in parallel since it is designed on the standard IEEE 796 bus. The operation time of the preprocessor in line segment extraction is usually 200 ms per 500 segments, though it differs according to the complexity of scene image. The gray-scale visual system supported by the model-based analysis program using the extracted line segments recognizes partially visible or overlapping industrial workpieces, and detects these locations and orientations. In recognition test using plastic workpieces, the recognition time was about 9 seconds for five pieces. In most of conventional model-based vision systems, the feature extraction time was extremely longer than that of the model-based analysis. The image preprocessor we have developed reduces the time ratio of feature extraction and model-based analysis to about 1/10.
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装配机器人基于模型视觉系统的图像预处理
研制了一种用于装配机器人视觉系统的专用图像预处理器。主要功能单元由查找表组成,利用半导体存储器大规模集成、速度快、价格低的优势。多个单元可以并行操作,因为它是在标准IEEE 796总线上设计的。在线段提取中,预处理器的操作时间通常为每500段200 ms,但会根据场景图像的复杂程度而有所不同。基于模型的分析程序支持的灰度视觉系统使用提取的线段识别部分可见或重叠的工业工件,并检测这些位置和方向。在使用塑料工件的识别测试中,对5个工件的识别时间在9秒左右。在大多数传统的基于模型的视觉系统中,特征提取时间比基于模型的分析时间要长得多。我们开发的图像预处理将特征提取和基于模型的分析的时间比减少到1/10左右。
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