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Spatio-temporal inductance-pattern recognition for vehicle re-identification

机译:用于车辆重新识别的时空电感模式识别

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Very recent research efforts started investigating the possibilities of more 'intelligent' usage of Inductive Loop Detectors (ILD), to possibly derive 'wide-area'/'section-related' measures from their outputs, as opposed to the limited conventional point measurements. This research attempts to improve the accuracy of vehicle re-identification at successive loop detector stations through improving the distance measures for pattern nearness in the pattern matching process. Vehicle inductance-signature data, collected by a California team of researchers, were further analysed at the University of Toronto. Several new techniques including neural networks, new distance measures and waveform warping-reduction processes were investigated to match the vehicle signature waveforms showing potential for significant accuracy improvement compared to features reported in the literature.
机译:最近的研究工作开始调查更多“智能”地使用感应环路检测器(ILD)的可能性,以从其输出中导出“广域” /“截面相关”度量,而不是有限的常规点测量。这项研究试图通过改进模式匹配过程中模式接近度的距离度量来提高连续回路检测站的车辆重新识别的准确性。加利福尼亚大学研究人员收集的车辆电感签名数据在多伦多大学进行了进一步分析。研究了包括神经网络,新的距离测量和波形翘曲减少过程在内的几种新技术,以匹配车辆信号波形,与相关文献报道的功能相比,这些波形显示出显着提高精度的潜力。

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