实时自主导航系统中冗余信息丢弃的Pearson相关系数

A. M. Neto, L. Rittner, N. J. Leite, D. Zampieri, R. Lotufo, André Mendeleck
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引用次数: 41

摘要

最近,许多自动驾驶汽车的控制应用被开发出来,其中一个重要的方面是信息的过剩,通常是冗余的,这给数据处理带来了巨大的计算成本。基于实时导航系统的性能可能会因处理所有这些冗余信息(例如视觉系统获取的所有图像)的需要而受到损害的事实,本工作提出了一种使用Pearson相关系数(PCC)的自动图像丢弃方法。该算法使用PCC作为判断当前图像是否与参考图像相似,可以忽略的标准,或者是否包含新的信息,应该在下一步过程中考虑(通过图像分割方法识别导航区域)。如果PCC表明存在高相关性,则丢弃图像而不进行分割。否则,图像被分割,并被设置为后续帧的新参考帧。该技术在视频序列中进行了测试,结果表明90%以上的图像可以在不丢失信息的情况下被丢弃,从而大大减少了识别导航区域所需的计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pearson's Correlation Coefficient for Discarding Redundant Information in Real Time Autonomous Navigation System
Lately, many applications for control of autonomous vehicles are being developed and one important aspect is the excess of information, frequently redundant, that imposes a great computational cost in data processing. Based on the fact that real-time navigation systems could have their performance compromised by the need of processing all this redundant information (all images acquired by a vision system, for example), this work proposes an automatic image discarding method using the Pearson's correlation coefficient (PCC). The proposed algorithm uses the PCC as the criteria to decide if the current image is similar to the reference image and could be ignored or if it contains new information and should be considered in the next step of the process (identification of the navigation area by an image segmentation method). If the PCC indicates that there is a high correlation, the image is discarded without being segmented. Otherwise, the image is segmented and is set as the new reference frame for the subsequent frames. This technique was tested in video sequences and showed that more than 90% of the images can be discarded without loss of information, leading to a significant reduction of computational time necessary to identify the navigation area.
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