Robust texture based biomass estimation of small fronded floating aquatic plants using j-values
Abstract
This paper proposes a new method of estimation
of the wet biomass of three floating aquatic plants, Spirodela
polyrhiza, Lemna minor and Azolla pinnata. The method uses a
homogeneity measure known as the J-value to detect the texture
of the fronds of the plants from the uniform water surface. The
proposed method is called J-value thresholding (JVT) and is
highly accurate compared to the alternative green layer extraction
(GLE). The average accuracy under normal illumination for the
proposed method is 91.59% for Spirodela polyrhiza, 80.11% for
Lemna minor and 77.4% for Azolla pinnata. Furthermore, it is
robust to different illumination levels with the Pearson correlation
coefficient of the estimates of different illumination levels being
above 95%. When used to obtain the growth rate of each plant
specie through linear regression, the result from the proposed
method is highly consistent with the ground truth of the image.
Description
Keywords
Biomass estimation, Vision based automation, Computer vision,, Spirodela polyrhiza, Lemna minor, Azolla pinnata