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SVIRO: Synthetic Vehicle Interior Rear Seat Occupancy Dataset and Benchmark

机译:SVIRO:合成车辆内部后座占用数据集和基准

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We release SVIRO, a synthetic dataset for sceneries in the passenger compartment of ten different vehicles, in order to analyze machine learning-based approaches for their generalization capacities and reliability when trained on a limited number of variations (e.g. identical backgrounds and textures, few instances per class). This is in contrast to the intrinsically high variability of common benchmark datasets, which focus on improving the state-of-the-art of general tasks. Our dataset contains bounding boxes for object detection, instance segmentation masks, keypoints for pose estimation and depth images for each synthetic scenery as well as images for each individual seatfor classification. The advantage of our use-case is twofold: The proximity to a realistic application to benchmark new approaches under novel circumstances while reducing the complexity to a more tractable environment, such that applications and theoretical questions can be tested on a more challenging dataset as toy problems. The data and evaluation server are available under https://sviro.kl.dfki.de.
机译:我们发布了SVIRO,这是十种不同车辆的乘客车厢景观的综合数据集,目的是分析在有限数量的变化(例如,相同的背景和纹理,很少的实例)上进行训练时,基于机器学习的方法的泛化能力和可靠性。每节课)。这与普通基准数据集固有的高可变性相反,后者专注于改进常规任务的最新水平。我们的数据集包含用于对象检测的边界框,实例分割蒙版,用于姿势估计的关键点和每种合成场景的深度图像以及用于分类的每个单独座位的图像。我们的用例的优点是双重的:在逼真的应用程序中可以在新情况下对新方法进行基准测试,同时将复杂性降低到更易处理的环境中,这样就可以在更具挑战性的数据集(如玩具问题)上测试应用程序和理论问题。数据和评估服务器位于https://sviro.kl.dfki.de下。

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