利用人工污染和危害深度探测技术实现智能海岸线环境管理

Arezoo Nazerdeylami, Babak Majidi, A. Movaghar
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引用次数: 13

摘要

旅游业和渔业社区的很大一部分依靠海岸的健康维持生计。这种环境的可视化解释为智能海滩管理等大规模操作中的决策支持自主代理提供了所需的信息。深度神经网络(DNN)最近被用于图像分类和场景理解,并取得了很好的效果。本文将深度神经网络用于海滨地区场景的目标检测。这种解释用于各种智能海滩应用的决策支持。用于智能海滩场景解释的技术是使用VGG架构在预训练的DNN上进行迁移学习。采用单镜头检测器(Single Shot Detector, SSD)技术对采集到的海滩区域数据集进行目标检测。收集了里海海滩的数据集,以便在现实世界环境中提供广泛的模拟。实验结果表明,该方法的精度可以满足海滨环境下的各种应用。
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Smart Coastline Environment Management Using Deep Detection of Manmade Pollution and Hazards
A significant portion of the tourism industry and the fishing communities depend on the health of the seashores for their livelihood. Visual interpretation of this environment provides the required information for autonomous agents for decision support in large-scale operations such as smart beach management. Deep Neural Networks (DNN) are recently used for image classification and scene understanding with very good results. In this paper, a DNN is used for object detection in the scenes from seashore areas. This interpretation is used for decision support for various smart beach applications. The technique used for smart beach scene interpretation is the transfer learning on a pre-trained DNN using VGG architecture. The Single Shot Detector (SSD) technique is used for object detection in the collected dataset from the beach areas. A dataset from the beaches of the Caspian Sea is collected in order to provide an extensive simulation in the real-world setting. The experimental results showed that the accuracy of the presented technique is acceptable for various applications in the seashore environment.
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