ドイ リョウイチ
  土居 良一   社会学部 社会学科   教授
■ 標題
  Doi 2013. Discriminating crop and other canopies by overlapping binary image layers
■ 概要
  For optimal management of agricultural fields by remote sensing, discrimination of the crop canopy from weeds and other objects is essential. In a digital photograph, a rice canopy was discriminated from a variety of weed and tree canopies and other objects by overlapping binary image layers of red-green-blue and other color components indicating the pixels with target canopy-specific (intensity) values based on the ranges of means +-(3x) standard deviations. By overlapping and merging the binary image layers, the target canopy specificity improved to 0.0015 from 0.027 for the yellow 1x standard deviation binary image layer, which was the best among all combinations of color components and means +-(3x) standard deviations. The most target rice canopy-likely pixels were further identified by limiting the pixels at different luminosity values. The discriminatory power was also visually demonstrated in this manner.
  Doi, R.
  単著   Opt. Eng.   The International Society for Optical Engineering (SPIE)   52(2),pp.Article ID 020502   2013


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