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arxiv: 2211.09769 · v2 · pith:CRMSSCCK · submitted 2022-11-17 · eess.SP · cs.CV· cs.LG

DeepSense 6G: A Large-Scale Real-World Multi-Modal Sensing and Communication Dataset

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classification eess.SP cs.CVcs.LG
keywords datasetcommunicationdeepsensemulti-modalsensingapplicationsarticledata
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This article presents the DeepSense 6G dataset, which is a large-scale dataset based on real-world measurements of co-existing multi-modal sensing and communication data. The DeepSense 6G dataset is built to advance deep learning research in a wide range of applications in the intersection of multi-modal sensing, communication, and positioning. This article provides a detailed overview of the DeepSense dataset structure, adopted testbeds, data collection and processing methodology, deployment scenarios, and example applications, with the objective of facilitating the adoption and reproducibility of multi-modal sensing and communication datasets.

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