The vehicle recognition area, including vehicle make-model recognition (VMMR), re-id, tracking, and parts-detection, has made significant progress in recent years, driven by several large-scale datasets for each task. These datasets are often non-overlapping, with different label schemas for each task: VMMR focuses on make and model, while re-id focuses on vehicle ID. It is promising to combine these datasets to take advantage of knowledge across datasets as well as increased training data; however, dataset integration is challenging due to the domain gap problem. This paper proposes ATEAM, an annotation team-of-experts to perform cross-dataset labeling and integration of disjoint annotation schemas. ATEAM uses diverse experts, each trained on datasets that contain an annotation schema, to transfer knowledge to datasets without that annotation. Using ATEAM, we integrated several common vehicle recognition datasets into a Knowledge Integrated Dataset (KID). We evaluate ATEAM and KID for vehicle recognition problems and show that our integrated dataset can help off-the-shelf models achieve excellent accuracy on VMMR and vehicle re-id with no changes to model architectures. We achieve mAP of 0.83 on VeRi, and accuracy of 0.97 on CompCars. We have released both the dataset and the ATEAM framework for public use.
翻译:车辆识别领域,包括车辆造型识别(VMMMR)、重新标识、跟踪和部件检测,近年来在每项任务的若干大型数据集驱动下取得了显著进展。这些数据集往往没有重叠,每个任务都有不同的标签模式:VMMMR侧重于制造和模型,而重新定位侧重于车辆识别。有希望将这些数据集结合起来,以利用跨数据集的知识以及更多的培训数据;然而,由于域差问题,数据集的整合具有挑战性。本文提议使用ATEAM,这是一个专家的批注小组,以进行交叉数据集标签和整合脱节的注解方案。 ATEAM使用不同的专家,每个专家都受过关于含有注解预案的数据集的培训,在没有说明的情况下将知识转移到数据集。利用ATEAM,我们将一些通用的车辆识别数据集纳入一个知识综合数据集(KID)。我们评估了ATEAM和KID的车辆识别问题,这是一个专家的批注解小组,以进行交叉数据集标签标签和整合。ATEAM使用多样化的专家,每个专家都使用含有注解图的数据集,我们无法在车辆识别模型上实现精确性数据模型,我们对VAMAM的模型进行升级。