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Drone-Based Car Counting via Density Map Learning

机译:基于无人机的汽车通过密度图学习计数

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摘要

Car counting on drone-based images is a challenging task in computer vision. Most advanced methods for counting are based on density maps. Usually, density maps are first generated by convolving ground truth point maps with a Gaussian kernel for later model learning (generation). Then, the counting network learns to predict density maps from input images (estimation). Most studies focus on the estimation problem while overlooking the generation problem. In this paper, a training framework is proposed to generate density maps by learning and train generation and estimation subnetworks jointly. Experiments demonstrate that our method outperforms other density map-based methods and shows the best performance on drone-based car counting.
机译:依靠无人机的图像的汽车是计算机愿景中的一个具有挑战性的任务。最先进的计数方法基于密度图。通常,首先通过将地面真理点映射与高斯内核进行追加模型学习(生成)来生成密度图。然后,计数网络学习从输入图像(估计)预测密度映射。大多数研究重点关注估计问题,同时忽略了发电问题。在本文中,提出了一种培训框架来通过联合学习和培训和估计子网来生成密度图。实验表明,我们的方法优于基于其他密度图的方法,并显示了基于无人机的汽车计数的最佳性能。

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