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Multi-label learning with multi-label smoothing regularization for vehicle re-identification

机译:具有多标签平滑正则化的多标签学习,用于车辆重新识别

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摘要

Vehicle re-identification (re-ID) is a vital technique to the urban intelligent video surveillance system and smart city. Given a query vehicle image, the vehicle re-ID aims to search and retrieve the images of the same vehicle that have been captured by different surveillance cameras with various viewing angles. Based on the observation that essential vehicle attributes, like vehicle's color and types (e.g., sedan, bus, truck, and so on), could be used as important traits to recognize vehicle, an effective multi-label learning (MLL) method is proposed in this paper that can simultaneously learn three labels: vehicle's ID, type, and color. With three labels, a multi-label smoothing regularization (MLSR) is further proposed, which can allocate a uniform label distribution to the multi-labeled training images to regularize MLL model and improve vehicle re-ID performance. Extensive experiments conducted on the VeRi and VehicleID datasets have demonstrated that the proposed MLL with MLSR approach can effectively improve the performance delivered by the baseline and outperform multiple state-of-the-art vehicle re-ID methods as well. (C) 2019 Elsevier B.V. All rights reserved.
机译:车辆重新识别(RE-ID)是城市智能视频监控系统和智能城市的重要技术。给定查询车辆图像,车辆RE-ID旨在搜索和检索已经通过各种观察角度被不同的监视摄像机捕获的相同车辆的图像。基于本发明的基本车辆属性,如车辆的颜色和类型(例如,轿车,公共汽车,卡车等)可以用作识别车辆的重要性状,提出了有效的多标签学习(MLL)方法在本文中,可以同时学习三个标签:车辆的ID,类型和颜色。通过三个标签,进一步提出了一种多标签平滑正则化(MLSR),可以将统一标签分布分配给多标记的训练图像以正规化MLL模型并改善车辆重新ID性能。在VERI和LISTID数据集上进行的广泛实验表明,具有MLSR方法的提议的MLL可以有效地提高基线提供的性能和优于最先进的车辆重新ID方法。 (c)2019 Elsevier B.v.保留所有权利。

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