Login / Signup

A neuromorphic dataset for tabletop object segmentation in indoor cluttered environment.

Xiaoqian HuangSanket KacholeAbdulla AyyadFariborz Baghaei NaeiniDimitrios MakrisYahya Zweiri
Published in: Scientific data (2024)
Event-based cameras are commonly leveraged to mitigate issues such as motion blur, low dynamic range, and limited time sampling, which plague conventional cameras. However, a lack of dedicated event-based datasets for benchmarking segmentation algorithms, especially those offering critical depth information for occluded scenes, has been observed. In response, this paper introduces a novel Event-based Segmentation Dataset (ESD), a high-quality event 3D spatial-temporal dataset designed for indoor object segmentation within cluttered environments. ESD encompasses 145 sequences featuring 14,166 manually annotated RGB frames, along with a substantial event count of 21.88 million and 20.80 million events from two stereo-configured event-based cameras. Notably, this densely annotated 3D spatial-temporal event-based segmentation benchmark for tabletop objects represents a pioneering initiative, providing event-wise depth, and annotated instance labels, in addition to corresponding RGBD frames. By releasing ESD, our aim is to offer the research community a challenging segmentation benchmark of exceptional quality.
Keyphrases
  • deep learning
  • convolutional neural network
  • machine learning
  • healthcare
  • air pollution
  • optical coherence tomography
  • risk assessment
  • high resolution
  • mass spectrometry
  • heavy metals