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Neural Networks Based Time-Delay Estimation using DCT Coefficients | Science Publications

机译:DCT系数的基于神经网络的时延估计科学出版物

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> This study dealt with the problem of estimating constant time delay embedded into a received signal that was noisy, delayed and damped image of a known reference signal. The received signal was filtered, normalized with respect to the peak value it achieved and then transformed by the Discrete Cosine Transform (DCT) into DCT coefficients. Those DCT coefficients that were most sensitive to time delay variations were selected and grouped to form the Reduced Discrete Cosine Transform Coefficients set (RDCTC). The time delays embedded in the filtered signals were efficiently encoded into those RDCTC sets. The RDCTC sets were applied to a pre trained multi layer feedforward Neural Network (NN), which computed the time-delay estimates. The network was initially trained with large sets of RDCTC vectors, in which each RDCTC vector corresponded to a signal delayed by a randomly selected constant time-delay. Using the RDCTC as input to the NN instead of the full length incoming signal itself resulted in a major reduction in the NN size. Accurate time delay estimates were obtained through simulation and compared against estimates obtained through classical cross-correlation technique.
机译: >这项研究涉及估计嵌入到接收信号中的恒定时间延迟的问题,该信号是已知参考信号的噪声,延迟和衰减图像。对接收到的信号进行滤波,相对于其达到的峰值进行归一化,然后通过离散余弦变换(DCT)转换为DCT系数。选择那些对时延变化最敏感的DCT系数,并将其分组以形成缩减离散余弦变换系数集(RDCTC)。嵌入到滤波信号中的时间延迟被有效地编码到那些RDCTC集中。将RDCTC集应用于预先训练的多层前馈神经网络(NN),该神经网络计算了时延估计。最初使用大量RDCTC向量集训练网络,其中每个RDCTC向量对应于一个信号,该信号延迟了随机选择的恒定时间延迟。使用RDCTC作为NN的输入而不是全长输入信号本身,可以大大减小NN的大小。通过仿真可以获得准确的时延估计值,并将其与通过经典互相关技术获得的估计值进行比较。

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