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Pearson's Correlation Coefficient: A More Realistic Threshold for Applications on Autonomous Robotics 被引量:3

Pearson's Correlation Coefficient: A More Realistic Threshold for Applications on Autonomous Robotics
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摘要 Many applications for control of autonomous platform are being developed and one important aspect is the excess of information, frequently redundant, that imposes a great computational cost in data processing. Taking into account the temporal coherence between consecutive frames, the PCC (Pearson's Correlation Coefficient) was proposed and applied as: discarding criteria methodology, dynamic power management solution, environment observer method which selects automatically only the regions-of-interest; and taking place in the obstacle avoidance context, as a method for collision risk estimation for vehicles in dynamic and unknown environments. Even if the PCC is a great tool to help the autonomous or semi-autonomous navigation, distortions in the imaging system, pixel noise, slight variations in the object's position relative to the camera, and other factors produce a false PCC threshold. Whereas there are homogeneous regions in the image, in order to obtain a more realistic Pearson's correlation, we propose to use some prior known environment information.
出处 《Computer Technology and Application》 2014年第2期69-72,共4页 计算机技术与应用(英文版)
关键词 PERCEPTION real time mobile robots Pearson's correlation. Pearson相关系数 机器人应用 门槛 动态功率管理 时间相干性 PCC 计算成本 数据处理
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