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Ground-to-Aerial Image Geo-Localization With a Hard Exemplar Reweighting Triplet Loss

机译:地球图像地质定位,具有硬样标重新重量三重态损失

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The task of ground-to-aerial image geo-localization can be achieved by matching a ground view query image to a reference database of aerial/satellite images. It is highly challenging due to the dramatic viewpoint changes and unknown orientations. In this paper, we propose a novel in-batch reweighting triplet loss to emphasize the positive effect of hard exemplars during end-to-end training. We also integrate an attention mechanism into our model using feature-level contextual information. To analyze the difficulty level of each triplet, we first enforce a modified logistic regression to triplets with a distance rectifying factor. Then, the reference negative distances for corresponding anchors are set, and the relative weights of triplets are computed by comparing their difficulty to the corresponding references. To reduce the influence of extreme hard data and less useful simple exemplars, the final weights are pruned using upper and lower bound constraints. Experiments on two benchmark datasets show that the proposed approach significantly outperforms the state-of-the-art methods.
机译:通过将地面视图查询图像匹配到航拍/卫星图像的参考数据库,可以实现地面图像地理定位的任务。由于戏剧性的观点变化和未知的取向,这是强大的挑战性。在本文中,我们提出了一种新的批量重新重量三重态损失,以强调端到端训练期间硬样品的积极效果。我们还使用特征级上下文信息将注意机制集成到我们的模型中。为了分析每个三联网的难度级别,首先使用距离整流因子来强制修改的逻辑回归到三元组。然后,设置用于相应锚的参考负距离,通过比较它们对相应的参考的难度来计算三元组的相对权重。为了减少极端硬数据的影响和更有用的简单示例,最终的重量使用上限和下限约束来修剪。两个基准数据集上的实验表明,该方法明显优于最先进的方法。

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