利用卷积神经网络检测图像中的葡萄簇

M. Shahzad, A. B. Aqeel, W. S. Qureshi
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引用次数: 1

摘要

卷积神经网络和深度学习自诞生以来已经彻底改变了每个领域。农业也在收获上述领域发展的成果。技术正在发生革命性的变化,以提高产量,节约水资源浪费,照顾病草,并增加农民的利润。葡萄是利润最高的水果之一,也是与果汁工业有关的重要水果。巴基斯坦是一个农业国,可以通过种植和提高每公顷葡萄产量而广泛受益。迄今为止,收获葡萄的最大挑战是成功地检测它们的集群;许多方法倾向于通过收获和分类技术来解决这个问题,在使用自动收获机收获葡萄后,将异物从葡萄中分离出来。目前可用的系统是根据来自发达国家或葡萄生产国的数据进行训练的,因此在任何新地点使用时都会出现数据偏差,因此需要从头创建数据集来验证研究结果。葡萄有不同的大小、颜色、种子大小和形状,这使得通过简单的计算机视觉进行检测更具挑战性。这项研究通过使用CNN和神经网络来解决这个问题,这些神经网络使用了来自当地农场的新创建的数据集,而其他研究和使用的方法并没有解决当地农民面临的问题。YOLO被选中在当地收集的葡萄数据集上进行训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Grape Clusters in Images Using Convolutional Neural Network
Convolutional Neural Networks and Deep Learning have revolutionized every field since their inception. Agriculture has also been reaping the fruits of developments in mentioned fields. Technology is being revolutionized to increase yield, save water wastage, take care of diseased weeds, and also increase the profit of farmers. Grapes are among the highest profit-yielding and important fruit related to the juice industry. Pakistan being an agricultural country, can widely benefit by cultivating and improving grapes per hectare yield. The biggest challenge in harvesting grapes to date is to detect their cluster successfully; many approaches tend to answer this problem by harvest and sort technique where the foreign objects are separated later from grapes after harvesting them using an automatic harvester. Currently available systems are trained on data that is from developed or grape-producing countries, thus showing data biases when used at any new location thus it gives rise to a need of creating a dataset from scratch to verify the results of research. Grape is available in different sizes, colors, seed sizes, and shapes which makes its detection, through simple Computer vision, even more challenging. This research addresses this issue by bringing the solution to this problem by using CNN and Neural Networks using the newly created dataset from local farms as the other research and the methods used don't address issues faced locally by the farmers. YOLO has been selected to be trained on the locally collected dataset of grapes.
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