Manjunath R. Kounte, Niran N, Pranav Hegde, Nisha R Dandur, N. S
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引用次数: 1
摘要
近年来,人们已经认识到污染对环境的危害,全球变暖和发展中国家生活水平下降就是证明。说到污染,塑料污染是人类造成的最严重的问题之一。除了塑料是不可生物降解的,它们还会降低植物产量,消耗土壤肥力。为了避免这种情况,需要进行废物管理教育。在这些污染物能够深入土壤之前将其清除是至关重要的。杂草是不受欢迎的植物,生长在其他植物附近。它们不仅在发育方面取代了健康的植物,而且还以它们为食,剥夺了它们的营养,导致农业产量大幅下降。使农业生产复杂化的另一个因素是植物病害的存在。科学家们从事各种各样的工作,包括预测疾病,预测其潜力,以及在疾病变得致命之前识别疾病。我们的新方法采用了一种首创的策略,包括使用无人机的矢量绘制一个区域,然后使用无人机相机的UDP流检测地图错误,这是业内首创。这些数据使用Nvidia Deep Stream进行实时分析。为了训练我们的数据集,我们将使用定制的顺序卷积神经网络。
Drone-based Detection and Geo-Mapping of Wastes, Weeds and Diseases in Plants using Deep Learning
It has been recognised in recent years how detrimental pollution has been to the environment, as evidenced by global warming and a decline in the standard of living in developing nations. When it comes to pollution, plastic pollution is one of the most serious issues that humanity has created. Apart from the fact that plastics are non-biodegradable, they also reduce plant yields and deplete soil fertility. To avoid this situation, waste management education is required. It is critical to eliminate these contaminants prior to their ability to seep deeply into the soil. Weeds are unwelcome plants that grow in close proximity to other plants. They not only supplant healthy plants in terms of development, but also feed on them, robbing them of nutrients and resulting in a significant decrease in agricultural production. Another factor complicating agricultural production is the presence of plant diseases. Scientists are engaged in a variety of endeavours, including forecasting illnesses, predicting their potential, and identifying diseases before they become fatal.Our new method employs a first-of-its-kind strategy that involves mapping a region using a drone’s vector and then detecting map errors using the UDP stream from the drone’s camera, a first in the industry. This data is analysed in real time using Nvidia Deep Stream. To train our data-set, we will use a custom-built Sequential Convolution Neural Network.