Sediment and Shallow Coastal Water Detection Utilizing MODIS Land Channels over Gulf of Martaban


  •  Abd Rahman Mat Amin    
  •  Khiruddin Abdullah    

Abstract

Application of clear waters (Case 1) algorithm to satellite imagery acquired with Moderate Resolution Imaging Spectroradiometer (MODIS) over turbid coastal waters (Case 2) often results in negative water-leaving radiances over extended areas. Also, the maximum reflectances for ocean color channels are significantly smaller than those for the land channels at similar wavelengths. Because of that, at the bright coastal waters area, ocean color channels (0.488, 0.531 and 0.551 µm) often saturate. The saturation of this channels contribute to the lost of geophysical and biological activities in the data. So, in order to overcome this circumstance, it is reasonable to use MODIS land and atmosphere channels (1 to 7) to derive an algorithm for the detections of turbid and shallow coastal waters area. In order to improve aerosol retrieving algorithm over the ocean, an algorithm to mask out the turbid coastal water area need to be developed.  In this paper, a simple algorithm to identify and mask shallow coastal water and high amounts of suspended sediment area in the Gulf of Martaban using MODIS L1B image is suggested and demonstrated. This algorithm uses log10 ratio of two MODIS solar channels that was originally designed for remote sensing over land and cloud properties (band 3 and band 4) centered at 0.47 and 0.55 µm respectively. Shallow coastal water and the area with high amount of suspended sediment are detected by our algorithm have been masked. The result of this algorithm is then evaluated by comparing the masked area with the true color image of the scene.



This work is licensed under a Creative Commons Attribution 4.0 License.
  • ISSN(Print): 1916-9639
  • ISSN(Online): 1916-9647
  • Started: 2009
  • Frequency: semiannual

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