Agriculture has always remained an integral part of the world. As the human population keeps on rising, the demand for food also increases, and so is the dependency on the agriculture industry. But in today's scenario, because of low yield, less rainfall, etc., a dearth of manpower is created in this agricultural sector, and people are moving to live in the cities, and villages are becoming more and more urbanized. On the other hand, the field of robotics has seen tremendous development in the past few years. The concepts like Deep Learning (DL), Artificial Intelligence (AI), and Machine Learning (ML) are being incorporated with robotics to create autonomous systems for various sectors like automotive, agriculture, assembly line management, etc. Deploying such autonomous systems in the agricultural sector help in many aspects like reducing manpower, better yield, and nutritional quality of crops. So, in this paper, the system design of an autonomous agricultural robot which primarily focuses on weed detection is described. A modified deep-learning model for the purpose of weed detection is also proposed. The primary objective of this robot is the detection of weed on a real-time basis without any human involvement, but it can also be extended to design robots in various other applications involved in farming like weed removal, plowing, harvesting, etc., in turn making the farming industry more efficient. Source code and other details can be found at https://github.com/Dhruv2012/Autonomous-Farm-Robot
翻译:农业始终是世界不可分割的一部分。随着人类人口不断增长,对粮食的需求也在增加,对农业的依赖也随之增加。但是在今天的假设中,由于产量低、降雨量少等原因,农业部门缺乏人力,人们正在迁移到城市生活,村庄越来越城市化。另一方面,机器人领域在过去几年里取得了巨大的发展。深学习(DL)、人工智能(AI)和机器学习(ML)等概念正在与机器人结合,以便为汽车、农业、装配线管理等各个部门建立自主系统。在农业部门部署这种自主系统在许多方面帮助减少人力、提高产量和作物营养质量。因此,在本文件中,描述了一个主要侧重于杂草检测的自主农业机器人的系统设计。还提出了用于检测杂草的经过修改的深层次学习模式。这个机器人的主要目标是在实时检测的基础上建立自主系统,为汽车、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、农业、