Authors
Faisal Ahmed, ASM Hossain Bari, ASM Shihavuddin, Hawlader Abdullah Al-Mamun, Paul Kwan
Publication date
2011/11/21
Conference
2011 IEEE 12th International Symposium on Computational Intelligence and Informatics (CINTI)
Pages
329-334
Publisher
IEEE
Description
Concerns regarding the environmental and economic impacts of excessive herbicide applications in agriculture have promoted interests in seeking alternative weed control strategies. In this context, an automated machine vision system that has the ability to differentiate between broadleaf and grass weeds in digital images to optimize the selection and dosage of herbicides can enhance the profitability and lessen environmental degradation. This paper presents an efficient and effective texture-based weed classification method using local binary pattern (LBP). The objective was to evaluate the feasibility of using micro-level texture patterns to classify weed images into broadleaf and grass categories for real-time selective herbicide applications. Two well-known machine learning methods, template matching and support vector machine, are used for classification. Experiments on 200 sample field images with 100 …
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