LAND: A Longitudinal Analysis of Neuromorphic Datasets
Gregory Cohen, Alexandre Marcireau

TL;DR
This paper reviews over 423 neuromorphic datasets, analyzing their characteristics, challenges, and the rise of synthetic data, to better understand data issues and propose solutions for future research.
Contribution
It provides a comprehensive snapshot of existing neuromorphic datasets, analyzes their structure, and discusses the potential of synthetic and meta-datasets to address data limitations.
Findings
Large datasets face standardization and access challenges
Synthetic datasets offer testing benefits but have potential pitfalls
Meta-datasets can reduce data needs and bias
Abstract
Neuromorphic engineering has a data problem. Despite the meteoric rise in the number of neuromorphic datasets published over the past ten years, the conclusion of a significant portion of neuromorphic research papers still states that there is a need for yet more data and even larger datasets. Whilst this need is driven in part by the sheer volume of data required by modern deep learning approaches, it is also fuelled by the current state of the available neuromorphic datasets and the difficulties in finding them, understanding their purpose, and determining the nature of their underlying task. This is further compounded by practical difficulties in downloading and using these datasets. This review starts by capturing a snapshot of the existing neuromorphic datasets, covering over 423 datasets, and then explores the nature of their tasks and the underlying structure of the presented…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Ferroelectric and Negative Capacitance Devices · Advanced Neural Network Applications
