HUMAN4D: A Human-Centric Multimodal Dataset for Motions and Immersive Media
Anargyros Chatzitofis, Leonidas Saroglou, Prodromos Boutis, Petros, Drakoulis, Nikolaos Zioulis, Shishir Subramanyam, Bart Kevelham, Caecilia, Charbonnier, Pablo Cesar, Dimitrios Zarpalas, Stefanos Kollias, Petros Daras

TL;DR
HUMAN4D is a comprehensive, synchronized multimodal 4D dataset capturing human activities with high-precision hardware, enabling advanced research in pose estimation, volumetric video, and dynamic 3D modeling.
Contribution
This paper introduces HUMAN4D, the first public dataset providing synchronized volumetric depth maps, multi-view RGBD, audio, and high-quality dynamic meshes for human activity analysis.
Findings
Benchmarking with state-of-the-art pose estimation algorithms.
Evaluation of 3D compression codecs on volumetric data.
Qualitative comparison of different 4D volumetric reconstructions.
Abstract
We introduce HUMAN4D, a large and multimodal 4D dataset that contains a variety of human activities simultaneously captured by a professional marker-based MoCap, a volumetric capture and an audio recording system. By capturing 2 female and male professional actors performing various full-body movements and expressions, HUMAN4D provides a diverse set of motions and poses encountered as part of single- and multi-person daily, physical and social activities (jumping, dancing, etc.), along with multi-RGBD (mRGBD), volumetric and audio data. Despite the existence of multi-view color datasets captured with the use of hardware (HW) synchronization, to the best of our knowledge, HUMAN4D is the first and only public resource that provides volumetric depth maps with high synchronization precision due to the use of intra- and inter-sensor HW-SYNC. Moreover, a spatio-temporally aligned scanned…
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