SRC3: A Video Dataset for Evaluating Domain Mismatch

Jonathan Sato, Chelsea Mediavilla, C. Ward, S. Parameswaran
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引用次数: 4

Abstract

In this paper we introduce new video datasets to investigate the gaps between synthetic and real imagery in object detection and depth estimation. Currently, synthetic image datasets with real-world counterparts largely focus on computer vision applications for autonomous driving in unconstrained environments. The high scene complexity of such datasets pose challenges for systematic studies of domain disparities. We aim to create a set of paired datasets to study the discrepancies between the two domains in a more controlled setting. To this end, we have created Synthetic-Real Counterpart 3 (SRC3), which contains multiple datasets with varying levels of scene and object complexity. These versatile datasets span multiple environments and consist of ground-truthed, real-world, and synthetic videos generated using a gaming engine. In addition to the dataset, we present an in-depth analysis and provide comparison benchmarks of these datasets using state-of-the-art detection algorithms. Our results show contrasting performance during cross-domain testing due to differences in image quality and statistics, indicating a need for domain adapted datasets and models.
sr3:一种评估域不匹配的视频数据集
在本文中,我们引入新的视频数据集来研究合成图像与真实图像在目标检测和深度估计方面的差距。目前,与现实世界相对应的合成图像数据集主要集中在无约束环境下自动驾驶的计算机视觉应用。这些数据集的高场景复杂性给系统地研究领域差异带来了挑战。我们的目标是创建一组配对数据集,以在更可控的环境中研究两个领域之间的差异。为此,我们创建了合成真实对应3 (SRC3),其中包含多个数据集,具有不同级别的场景和对象复杂性。这些通用的数据集跨越多个环境,由真实的、真实的和使用游戏引擎生成的合成视频组成。除了数据集之外,我们还使用最先进的检测算法对这些数据集进行了深入分析并提供了比较基准。我们的研究结果显示,由于图像质量和统计数据的差异,在跨域测试中表现出截然不同的性能,这表明需要适应域的数据集和模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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