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Vehicle Re-identification in Context

机译:上下文中的车辆重新识别

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Existing vehicle re-identification (re-id) evaluation benchmarks consider strongly artificial test scenarios by assuming the availability of high quality images and fine-grained appearance at an almost constant image scale, reminiscent to images required for Automatic Number Plate Recognition, e.g. VeRi-776. Such assumptions are often invalid in realistic vehicle re-id scenarios where arbitrarily changing image resolutions (scales) are the norm. This makes the existing vehicle re-id benchmarks limited for testing the true performance of a re-id method. In this work, we introduce a more realistic and challenging vehicle re-id benchmark, called Vehicle Re-Identification in Context (VRIC). In contrast to existing vehicle re-id datasets, VRIC is uniquely characterised by vehicle images subject to more realistic and unconstrained variations in resolution (scale), motion blur, illumination, occlusion, and viewpoint. It contains 60,430 images of 5,622 vehicle identities captured by 60 different cameras at heterogeneous road traffic scenes in both day-time and nighttime. Given the nature of this new benchmark, we further investigate a multi-scale matching approach to vehicle re-id by learning more discriminative feature representations from multi-resolution images. Extensive evaluations show that the proposed multi-scale method outperforms the state-of-the-art vehicle re-id methods on three benchmark datasets: Vehi-cleID, VeRi-776, and VRIC.
机译:现有的车辆重新识别(re-id)评估基准通过假设在几乎恒定的图像比例下可获得高质量图像和细粒度外观的方式来考虑强烈的人工测试场景,这让人联想到自动车牌识别所需的图像,例如VeRi-776。这样的假设在现实的车辆残障场景中通常是无效的,在现实的场景中,任意更改的图像分辨率(比例)是常态。这使得现有的车辆re-id基准测试仅限于测试re-id方法的真实性能。在这项工作中,我们引入了一个更现实,更具挑战性的车辆重新识别基准,称为“上下文中的车辆重新识别”(VRIC)。与现有的车辆re-id数据集相比,VRIC的独特之处在于车辆图像受到分辨率(比例),运动模糊,照明,遮挡和视点更现实和不受约束的变化的影响。它包含60,430张图像的60,430张图像,这些图像由60种不同的摄像头在白天和晚上的异构道路交通场景中捕获。鉴于此新基准的性质,我们通过从多分辨率图像中学习更多判别式特征表示,进一步研究了一种多尺度匹配的车辆识别方法。广泛的评估表明,在三个基准数据集:Vehi-cleID,VeRi-776和VRIC上,所提出的多尺度方法优于最新的车辆修复方法。

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