Noppadon Pumpong, P. Boonserm, Kazuki Kobayashi, N. Cooharojananone
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引用次数: 1
摘要
通过遥感图像的建筑物检测系统得到了广泛的研究。本文提出了一种基于不同层次遥感影像的机场建筑物检测模型。该模型采用基于卷积神经网络(CNN)思想的You Only Look Once (YOLO)算法进行改进。我们还使用Jet Saliency Map调整每个输入图像到我们的模型。本研究中要检测的建筑物是客运大楼,控制塔,货运楼和机库,这些数据集来自亚洲322个不同的机场,包括4,933张图像和13,103个建筑物。此外,还对改进模型的效率和准确性进行了检验。结果表明,该模型的目标检测效率高达85%以上,比原模型的目标检测精度更高。
Building Detection in Airports through Remote Sensing Image Using YOLOv3 with Jet Saliency Map
Building detection system through the remote sensing of images has been widely studied. In this paper, we propose a model for the detection of buildings at airports through different levels of remote sensing image. The proposed model is improved using from the You Only Look Once (YOLO) algorithm, which is based on the idea of the convolutional neural network (CNN). We also adjust each input image to our model using the Jet Saliency Map. The buildings to be detected in this study are the passenger terminals, the control towers, the cargo buildings, and the hangars, for which the data set have been collected from 322 different airports in Asia including 4,933 images and 13,103 buildings. Furthermore, our improved model is also examined for efficiency and accuracy. The results show that it can detect the intended objects efficiently 85% upwards, which provides higher accuracy than the original model.