Title :
Salad leaf disease detection using machine learning based hyper spectral sensing
Author :
Dutta, Ritaban ; Smith, Daniel ; Yanfeng Shu ; Qing Liu ; Doust, Petra ; Heidrich, Shaun
Author_Institution :
Digital Productivity & Services Flagship, CSIRO, Hobart, TAS, Australia
Abstract :
In this paper a novel application of salad leaf disease detection has been developed using a combination of machine learning algorithms and Hyper Spectral sensing. Various field experiments were conducted to acquire different vegetation reflectance spectrum profiles using a portable high resolution ASD FieldSpec4 Spectroradiometer, at a farm located in Richmond, Tasmania, Australia, (-42.36, 147.29), A total of 105 spectral samples were collected through three different experiments with baby salad leaves. In this study, Principal Component Analysis (PCA), Multi-Statistics Feature ranking and Linear Discriminant Analysis (LDA) Classifiers were used to classify disease affected salad leaves from the healthy salad leaves with 84% classification accuracy. This study concluded that the machine learning based approach along with a high resolution hyper Spectroradiometer could potentially provide a novel mechanism to use in the farm for rapid detection of salad leaf disease.
Keywords :
agricultural engineering; condition monitoring; learning (artificial intelligence); plant diseases; principal component analysis; spectrometers; vegetation mapping; ASD FieldSpec4 spectroradiometer; Australia; LDA classifiers; PCA; Richmond; Tasmania; hyper spectral sensing; linear discriminant analysis; machine learning; multistatistics feature ranking; principal component analysis; salad leaf disease detection; vegetation reflectance spectrum profiles; Absorption; Diseases; Principal component analysis; Sensors; Soil; Spectroradiometers; Variable speed drives;
Conference_Titel :
SENSORS, 2014 IEEE
Conference_Location :
Valencia
DOI :
10.1109/ICSENS.2014.6985047