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Introducing an indoor object classification dataset including sparse point clouds from mmWave radar.

Panagiotis KasnesisChristos ChatzigeorgiouVasileios DoulgerakisDimitris UzunidisEvangelos MargaritisCharalampos Z PatrikakisStelios A Mitilineos
Published in: Scientific data (2024)
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.
Keyphrases
  • machine learning
  • big data
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  • deep learning
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  • blood flow
  • neural network
  • high intensity
  • heavy metals