Identificação dos sintomas de ferrugem em áreas cultivadas com cana-de-açúcar / Identification of symptoms of rust in sugar cane plantations.

AUTOR(ES)
DATA DE PUBLICAÇÃO

2004

RESUMO

Cultivated areas of sugar cane may be targeted by the fungus Puccinia melanocephala and susceptible varieties may develop a disease known as sugar cane rust. Because the disease affects, in general, very large areas, the losses are very considerable. Currently, the evaluation of the disease is carried out by experts who must walk through the plantations analysing the leaves visually and assigning a certain degree of infection to the area. This model is somehow subjective because, due to experts’ experience and visual acuity, the evaluation for a specific area may present divergent results. In face of this problem, this work presents an approach to automate the process of identification and evaluation of the disease, as a new means to minimise the losses. This work shows a method to classify the infection levels of sugar cane rust through the analysis of aerial images of sugar cane plantations, acquired by an aeromodel. From these pictures, some characteristics are based on colours are extracted and further classified by a Backpropagation Neural Network. Furthermore, it has been implemented a method for the segmentation of digital images of sugar cane leaves infected by rust. This is done to corroborate the manual evaluation done by experts. The results have shown that the method is capable of discriminating the three levels of infection available and they also indicate that it can also be equally efficient in the discrimination of the nine distinct infection levels of the adopted scale.

ASSUNTO(S)

segmentation extração de característica colours classificação por redes neurais feature extraction segmentação neural network classification cores

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