基于混合距离的MKELM方法的果蔬质量实时保证

G. Devika, Priya, Chandra Sekhar Rao Bandaru, R. V. Srinivas, N. Girdharwal, M. Devi
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引用次数: 0

摘要

可持续发展依赖于若干支柱,农业就是其中之一。鉴于预期的人口增长,可持续农业必须确保粮食安全,同时保持经济和社会可行性,并将对生物多样性和自然生态系统的影响降到最低。深度学习已被证明是分析大量数据的先进方法,在图像处理和物体识别等多个领域都有应用。最近,它被用于食品工程和科学领域。食品识别、农产品、肉类和海鲜的质量检测、食品供应链和污染只是这些系统着手解决的一些问题。人工智能(AI)是精准农业领域的常用工具,用于预测收获作物的质量。在评估收获后不同阶段的作物时尤其如此。某些收获后的疾病或损害,如腐烂,可以完全消灭作物,甚至产生对人类有害的毒素,使疾病和损害识别成为当务之急。gabor滤波预处理、HE增强、K-means分割、LBP和BIC特征提取构成了建议的方法。最后,利用DB-KELM对模型进行训练。与ELM和KELM相比,该方法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Quality Assurance of Fruits and Vegetables using Hybrid Distance based MKELM Approach
Sustainable development relies on a number of pillars, one of which being agriculture. Sustainable agriculture, in light of expected population expansion, must ensure food security while remaining economically and socially viable and having a minimal impact on biodiversity and natural ecosystems. Deep learning has shown to be an advanced method for analyzing large amounts of data, having applications in fields as diverse as image processing and object recognition. Recently, it’s being used in the fields of food engineering and science. Food recognition, quality detection of produce, meat, and seafood, the food supply chain, and contamination were only some of the problems these systems set out to solve. Artificial intelligence (AI) is a common tool in the field of precision agriculture for making predictions about the quality of harvested crops. This is especially true when assessing crops at various post-harvest stages. Certain postharvest diseases or damages, like rot, can completely wipe out crops and even produce toxins that are hazardous to humans, making disease and damage identification a top priority. Preprocessing with a gabor filter, enhancement with HE, segmentation with a K-means algorithm, and feature extraction with LBP and BIC make up the suggested method. Lastly, DB-KELM is used to train the model. As compared to ELM and KELM, the proposed method performs better.
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