Paper
22 September 1997 Remote sensing of atmosphere and water media under conditions of a priori uncertainty
Michail M. Kugeiko, Dmitry M. Onoshko
Author Affiliations +
Proceedings Volume 3110, 10th Meeting on Optical Engineering in Israel; (1997) https://doi.org/10.1117/12.281409
Event: 10th Meeting on Optical Engineering in Israel, 1997, Jerusalem, Israel
Abstract
The greatest difficulties at the determination of optical characteristics occur at the remote sensing of complex scattering media under conditions of absence of a prior information about medium under investigation. Such media correspond to the atmosphere of large industrial towns. Known one-frequency methods of interpretation of lidar measurements results have low accuracy of the determination of optical characteristics profiles and, the more so, as microphysical characteristics profiles because of considerable discrepancy between the real media and their model representations, for which the processing algorithms have been obtained. Moreover, the additional independent measurement are required in order to determine base values or attenuation coefficients in the certain points on the sensing route, or the transparency of the route interval. This requirement significantly reduce the operational advantages of the remote lidar method. The mentioned flaws are remedied in the proposed here processing technique of the lidar measurements data.
© (1997) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Michail M. Kugeiko and Dmitry M. Onoshko "Remote sensing of atmosphere and water media under conditions of a priori uncertainty", Proc. SPIE 3110, 10th Meeting on Optical Engineering in Israel, (22 September 1997); https://doi.org/10.1117/12.281409
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KEYWORDS
Backscatter

Calibration

Signal attenuation

LIDAR

Atmospheric optics

Remote sensing

Atmospheric sensing

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