Evaluation of bag-of-features (BoF) technique for weed management in sugarcane production

W. E. Santiago, N. J. Leite, B. Teruel, M. Karkee, C. A. Azania
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引用次数: 4

Abstract

Weeds interfere in agricultural production, causing a reduction in crop yields and quality. The identification of weed species and the level of infestation is very important for the definition of appropriate management strategies. This is especially true for sugarcane, which is widely produced around the world. The present study has sought to develop and evaluate the performance of the Bag-of-Features (BoF) approach for use as a tool to aid decision-making in weed management in sugarcane production. The support vector machine to build a mathematical model of rank consisted of 30553 25x25-pixel images. Statistical analysis demonstrated the efficacy of the proposed method in the identification and classification of crops and weeds, with an accuracy of 71.6% and a Kappa index of 0.43. Moreover, even under conditions of high weed density and large numbers of overlapping and/or occluded leaves, weeds could be distinguished from crops This study clearly shows that the system can provide important subsidies for the formulation of strategies for weed management, especially in sugarcane, for which the timing of weed control is crucial.
特征袋(BoF)技术在甘蔗杂草管理中的应用评价
杂草干扰农业生产,导致作物产量和质量下降。杂草种类和侵害程度的识别对于制定适当的管理策略非常重要。甘蔗尤其如此,它在世界各地广泛生产。本研究旨在开发和评估特征袋(BoF)方法的性能,以作为辅助甘蔗生产中杂草管理决策的工具。用支持向量机建立一个由30553张25x25像素的图像组成的秩数学模型。统计分析表明,该方法对作物和杂草的识别和分类具有较好的效果,准确率为71.6%,Kappa指数为0.43。此外,即使在杂草密度高、叶片大量重叠和/或闭塞的情况下,杂草也可以与作物区分。该研究清楚地表明,该系统可以为杂草管理策略的制定提供重要的补贴,特别是在甘蔗中,杂草控制的时机至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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