首页> 外文会议>Conference on Sensor Fusion: Architectures, Algorithms, and Applications Ⅴ Apr 18-20, 2001, Orlando, USA >Development of a sensor integration strategy for robotic application based on geometric optimization
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Development of a sensor integration strategy for robotic application based on geometric optimization

机译:基于几何优化的机器人应用传感器集成策略的开发

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Sensor fusion is an important technology, which is growing exponentially due to its tremendous application potential. Appropriate fusion technology is needed to be developed specially when a system requires redundant sensors to be used. More the redundancy in sensors, more is the computational complexity for controlling the system and more is its intelligence level. This research presents a strategy developed for multiple sensor fusion, based on geometric optimization. Each sensor's uncertainty model has been developed. Using Lagrangian optimization techniques the individual sensor's uncertainty has been fused to reduce the overall uncertainty to generate a consensus among the sensors regarding their acceptable values. Using fission-fusion architecture, the precision level has further been improved. Subsequently, using feed back from the fused sensory information, the net error has further been minimized to any pre assigned value by developing a fusion technique in the differential domain (FDD). The techniques have been illustrated using synthesized data from two types of sensors (optical encoder and a single camera vision sensor). The application experience of the same fusion strategy in improving the precision of correctness of stereo matching using multiple baselines has also been discussed.
机译:传感器融合是一项重要的技术,由于其巨大的应用潜力而呈指数增长。当系统需要使用冗余传感器时,需要专门开发适当的融合技术。传感器中的冗余度越高,控制系统的计算复杂性就越大,其智能水平也就越高。这项研究提出了一种基于几何优化为多传感器融合开发的策略。每个传感器的不确定性模型已经开发出来。使用拉格朗日优化技术融合了单个传感器的不确定性,以减少总体不确定性,从而在传感器之间就可接受值达成共识。使用裂变融合架构,精度水平得到了进一步提高。随后,使用来自融合的感官信息的反馈,通过开发差分域(FDD)中的融合技术,将净误差进一步减小到任何预先分配的值。已经使用来自两种类型的传感器(光学编码器和单个摄像机视觉传感器)的合成数据说明了这些技术。还讨论了相同融合策略在提高使用多个基线的立体声匹配的正确性方面的应用经验。

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