RecyBat24: a dataset for detecting lithium-ion batteries in electronic waste disposal.

Journal: Scientific data
Published Date:

Abstract

In recent years, deep learning techniques have been extensively used for the identification and classification of lithium-ion batteries. However, these models typically require a costly and labor-intensive labeling process, often influenced by commercial or proprietary concerns. In this study, we introduce RecyBat24, a publicly accessible image dataset for the detection and classification of three battery types: Pouch, Prismatic, and Cylindrical. Our dataset is designed to support both academic research and industrial applications, closely replicating real-world scenarios during the acquisition process and employing data augmentation techniques to simulate various external conditions. Additionally, we demonstrate how the RecyBat24's detection-oriented annotations can be used to create a second version of RecyBat24for instance-segmentation tasks. Finally, we demonstrate that recent lightweight machine learning models achieve high accuracy, highlighting their potential for classification and segmentation applications where computational resources are constrained.

Authors

  • Ximena Carolina Acaro Chacón
    University of Calabria, Arcavacata, Italy. carolina.acaro@dimes.unical.it.
  • Fabrizio Lo Scudo
    University of Calabria, Arcavacata, Italy. fabrizio.loscudo@unical.it.
  • Gregorio Cappuccino
    University of Calabria, Arcavacata, Italy.
  • Carmine Dodaro
    University of Calabria, Arcavacata, Italy.

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