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Deep Multi-modal Vehicle Detection in Aerial ISR Imagery

机译:空中ISR影像中的深度多模式车辆检测

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Since the introduction of deep convolutional neural networks (CNNs), object detection in imagery has witnessed substantial breakthroughs in state-of-the-art performance. The defense community utilizes overhead image sensors that acquire large field-of-view aerial imagery in various bands of the electromagnetic spectrum, which is then exploited for various applications, including the detection and localization of man-made objects. In this work, we utilize a recent state-of-the art object detection algorithm, faster R-CNN, to train a deep CNN for vehicle detection in multimodal imagery. We utilize the vehicle detection in aerial imagery (VEDAI) dataset, which contains overhead imagery that is representative of an ISR setting. Our contribution includes modification of key parameters in the faster R-CNN algorithm for this setting where the objects of interest are spatially small, occupying less than 1:5×10-3 of the total image pixels. Our experiments show that (1) an appropriately trained deep CNN leads to average precision rates above 93% on vehicle detection, and (2) transfer learning between imagery modalities is possible, yielding average precision rates above 90% in the absence of fine-tuning.
机译:自从深度卷积神经网络(CNN)引入以来,图像中的对象检测已见证了最新性能的重大突破。国防界利用高架图像传感器获取电磁频谱各个波段的大视野航拍图像,然后将其用于各种应用,包括人造物体的检测和定位。在这项工作中,我们利用最新的最先进物体检测算法,更快的R-CNN,来训练用于多模态图像中车辆检测的深层CNN。我们利用航空影像(VEDAI)数据集中的车辆检测功能,该数据集包含代表ISR设置的头顶影像。我们的贡献包括针对此设置的快速R-CNN算法中的关键参数修改,在这种设置中,目标对象在空间上很小,占不到总图像像素的1:5×10-3。我们的实验表明,(1)经过适当训练的深度CNN可使车辆检测的平均准确率超过93%,并且(2)图像模态之间的转移学习是可能的,在不进行微调的情况下,平均准确率会超过90% 。

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