Publication | Closed Access
PedX: Benchmark Dataset for Metric 3-D Pose Estimation of Pedestrians in Complex Urban Intersections
69
Citations
27
References
2019
Year
EngineeringHuman Pose Estimation3D Pose Estimation3D Computer VisionImage AnalysisData SciencePattern RecognitionHuman MotionKinematicsComputational GeometryComplex Urban IntersectionsMachine VisionNovel DatasetStructure From MotionPose EstimationBenchmark Dataset3D Object RecognitionComputer VisionMotion Capture System3D VisionNatural SciencesUrban IntersectionsScene Modeling
This letter presents a novel dataset titled PedX, a large-scale multimodal collection of pedestrians at complex urban intersections. PedX consists of more than 5 000 pairs of high-resolution (12MP) stereo images and LiDAR data along with providing two-dimensional (2-D) image labels and 3-D labels of pedestrians in a global coordinate frame. Data were captured at three four-way stop intersections with heavy pedestrian-vehicle interaction. We also present a 3-D model fitting algorithm for automatic labeling harnessing constraints across different modalities and novel shape and temporal priors. All annotated 3-D pedestrians are localized into the real-world metric space, and the generated 3-D models are validated using a motion capture system configured in a controlled outdoor environment to simulate pedestrians in urban intersections. We also show that the manual 2-D image labels can be replaced by state-of-the-art automated labeling approaches, thereby facilitating automatic generation of large scale datasets.
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