Title :
SADE: Android spectral reflectance estimator application using Wiener estimation to estimate sambiloto leaf´s age
Author :
Anggoro, M. Rake Linggar ; Herdiyeni, Yeni
Author_Institution :
Dept. of Comput. Sci., Bogor Agric. Univ., Bogor, Indonesia
Abstract :
This research proposes an Android application to estimate sambiloto (Andrographis paniculata) leaf´s age from its estimated spectral reflectance using Wiener estimation. Sambiloto is one of Indonesia´s popular medicinal plant. In order to use quality plants, a quality control method, such as lab tests, must be conducted. These lab tests require the destruction of leaf samples. One promising alternative is by using image processing using Wiener estimation. Wiener estimation is a conventional method to estimate high-dimensional data from low-dimensional data, for example in this case, three-channel image (RGB) to spectral reflectance. We can quantify the sambiloto leaf´s quality through its spectral data in the form of its age. This research also proposes an improvement in dataset acquisition for the Wiener estimation. In the experiment we used datasets consisting of 97 standard colors, 15 samboloto leaves, and their combination. The results shows that the 15 sambiloto leaves dataset and second polynomial order gives the best reconstructed spectral reflectance. The RMSE and GFC of this dataset are 3.57 and 0.99, which is better than several previous researches. We use Probabilistic Neural Network for classifying the leaf´s age from its reconstructed spectral reflectance. The accuracy for the age identification using PNN is 65%.
Keywords :
biology computing; botany; image classification; image colour analysis; mean square error methods; neural nets; polynomials; spectral analysis; stochastic processes; Andrographis paniculata; Android spectral reflectance estimator application; GFC; Indonesia popular medicinal plant; RGB; RMSE; SADE; Wiener estimation; age identification; dataset acquisition; high-dimensional data estimation; image processing; lab tests; leaf age classification; low-dimensional data; probabilistic neural network; quality control method; quality plants; sambiloto leaf age estimation; sambiloto leaf quality; second polynomial order; three-channel image; Accuracy; Biomedical imaging; Estimation; Image color analysis; Image reconstruction; Reflectivity; Training; Android; Sambiloto leaf; Wiener estimation; age; reflectance;
Conference_Titel :
Intelligent Technology and Its Applications (ISITIA), 2015 International Seminar on
Conference_Location :
Surabaya
Print_ISBN :
978-1-4799-7710-9
DOI :
10.1109/ISITIA.2015.7219982