CVDec 25, 2014

Brachiaria species identification using imaging techniques based on fractal descriptors

arXiv:1412.7849v128 citations
AI Analysis

This provides a rapid and accurate method for species identification in forage crops, which is important for agricultural and trade applications, but it is incremental as it applies existing techniques to a new dataset.

The paper tackled the problem of identifying Brachiaria forage species by applying fractal descriptors from leaf images and using a Support Vector Machine for classification, achieving accurate discrimination among five species.

The use of a rapid and accurate method in diagnosis and classification of species and/or cultivars of forage has practical relevance, scientific and trade in various areas of study. Thus, leaf samples of fodder plant species \textit{Brachiaria} were previously identified, collected and scanned to be treated by means of artificial vision to make the database and be used in subsequent classifications. Forage crops used were: \textit{Brachiaria decumbens} cv. IPEAN; \textit{Brachiaria ruziziensis} Germain \& Evrard; \textit{Brachiaria Brizantha} (Hochst. ex. A. Rich.) Stapf; \textit{Brachiaria arrecta} (Hack.) Stent. and \textit{Brachiaria spp}. The images were analyzed by the fractal descriptors method, where a set of measures are obtained from the values of the fractal dimension at different scales. Therefore such values are used as inputs for a state-of-the-art classifier, the Support Vector Machine, which finally discriminates the images according to the respective species.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes