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Multi-Proxy Constraint Loss for Vehicle Re-Identification

机译:车辆重新识别的多功能约束损失

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摘要

Vehicle re-identification plays an important role in cross-camera tracking and vehicle search in surveillance videos. Large variance in the appearance of the same vehicle captured by different cameras and high similarity of different vehicles with the same model poses challenges for vehicle re-identification. Most existing methods use a center proxy to represent a vehicle identity; however, the intra-class variance leads to great difficulty in fitting images of the same identity to one center feature and the images with high similarity belonging to different identities cannot be separated effectively. In this paper, we propose a sampling strategy considering different viewpoints and a multi-proxy constraint loss function which represents a class with multiple proxies to perform different constraints on images of the same vehicle from different viewpoints. Our proposed sampling strategy contributes to better mine samples corresponding to different proxies in a mini-batch using the camera information. The multi-proxy constraint loss function pulls the image towards the furthest proxy of the same class and pushes the image from the nearest proxy of different class further away, resulting in a larger margin between decision boundaries. Extensive experiments on two large-scale vehicle datasets (VeRi and VehicleID) demonstrate that our learned global features using a single-branch network outperforms previous works with more complicated network and those that further re-rank with spatio-temporal information. In addition, our method is easy to plug into other classification methods to improve the performance.
机译:车辆重新识别在监控视频中跨相机跟踪和车辆搜索起着重要作用。通过不同摄像机捕获的相同车辆的外观的大方差以及具有相同模型的不同车辆的高相似性带来了车辆重新识别的挑战。大多数现有方法使用中心代理代表车辆身份;然而,级别的方差导致拟合与一个中心特征相同的身份的图像的很大困难,并且无法有效地分离具有属于不同标识的高相似性的图像。在本文中,我们提出了考虑不同的观点和多代理约束损失函数的采样策略,该模拟策略表示具有多个代理的类,用于从不同的视点对同一车辆的图像执行不同的约束。我们所提出的采样策略有助于使用相机信息在迷你批量中对应于不同代理的矿井样本。多代理约束损耗函数将图像朝向同一类的最远代理提出,并将图像从最近的不同类的代理推开,导致判定边界之间的较大余量。在两个大型车辆数据集(VERI和LASTID)上进行了广泛的实验,表明我们使用单分支网络的学习全局功能优于以前的工作,以更复杂的网络和与时空信息进一步重新排名的工作。此外,我们的方法很容易插入其他分类方法以提高性能。

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