Algorithm SNR RMSE
Combination method 21.94 0.0065
Direct average method 17.54 0.0110
Forced de-noising method 19.00 0.0093
FFT method 21.34 0.0070
Table 1. SNR and RMSE of different de-noising algorithms
In the Table 1, the SNR of combination method is highest and
the RMSE is smallest. So, the combination of modulus maxima
method and threshold method based on wavelet transform can
effectively eliminate different noise of backscatter signals and
make the extracted signal cognizable.
5. CONCLUSIONS
In this paper, a new lidar with red and near infrared wavelengths
was proposed to apply for features monitoring of different
objects. However, backscatter signals of the lidar system are
seriously strongly influenced by variety of noise and signal
noise which has to be reduced. Based on the wavelet transform,
combination method of modulus maxima method and threshold
method was proposed. The results tested the ability of the
algorithm after comparison of other classical algorithms. In fact,
the de-noised signals had smooth waveforms and the SNR was
also improved significantly after the de-noising processing.
Nevertheless, there are still some questions over this method,
and the algorithm should be further improved in the subsequent
work.
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ACKNOWLEDGEMENTS
This work was supported by 973 Program (2009CB723905), the
NSFC (41101334, 10978003, 41127901), the Fundamental
Research Funds for the Central Universities.