Kasnesis Panagiotis, Chatzigeorgiou Christos, Doulgerakis Vasileios, Uzunidis Dimitris, Margaritis Evangelos, Patrikakis Charalampos Z, Mitilineos Stelios A
University of West Attica, Department of Electrical and Electronic Engineering, Egaleo, 12241, Greece.
ThinGenious PC, Marousi, 15125, Greece.
Sci Data. 2024 Aug 3;11(1):842. doi: 10.1038/s41597-024-03678-2.
This document introduces the RadIOCD, which is a dataset that contains sparse point cloud representations of indoor objects, collected by subjects wearing a commercial off-the-shelf mmWave radar. In particular, RadIOCD includes the recordings of 10 volunteers moving towards 5 different objects (i.e., backpack, chair, desk, human, and wall), placed in 3 different environments. RadIOCD includes sparse 3D point cloud data, together with their doppler velocity and intensity provided by the mmWave radar. A total of 5,776 files are available, with each one having an approximate duration of 8s. The scope of RadIOCD is the availability of data for the recognition of objects solely recorded by the mmWave radar, to be used in applications were the vision-based classification is cumbersome though critical (e.g., in search and rescue operation where there is smoke inside a building). Furthermore, we showcase that this dataset after being segmented into 76,821 samples contains enough data to apply Machine Learning-based techniques, ensuring that they could generalize in different environments and "unseen" subjects.
本文档介绍了RadIOCD,它是一个数据集,包含由佩戴商用现成毫米波雷达的受试者收集的室内物体的稀疏点云表示。具体而言,RadIOCD包括10名志愿者朝着放置在3种不同环境中的5种不同物体(即背包、椅子、桌子、人以及墙壁)移动时的记录。RadIOCD包括稀疏的3D点云数据,以及毫米波雷达提供的多普勒速度和强度。总共提供了5776个文件,每个文件的时长约为8秒。RadIOCD的范围是提供仅由毫米波雷达记录的用于物体识别的数据,以用于基于视觉的分类虽然关键但很麻烦的应用(例如,在建筑物内有烟雾的搜索和救援行动中)。此外,我们展示了该数据集在被分割成76821个样本后包含足够的数据来应用基于机器学习的技术,确保它们能够在不同环境和“未见过”的受试者中进行泛化。