Abstract
We endeavor on a rarely explored task named Insubstantial Object Detection (IOD), which aims to localize the object with following characteristics:(1) amorphous shape with indistinct boundary; (2) similarity to surroundings; (3) absence in color. Accordingly, it is far more challenging to distinguish insubstantial objects in a single static frame and the collaborative representation of spatial and temporal information is crucial. Thus, we construct an IOD-Video dataset comprised of 600 videos (141,017 frames) covering various distances, sizes, visibility, and scenes captured by different spectral ranges.
  Introduction
IOD-Video Dataset Download IOD-Video Dataset Download
IOD-Video Dataset1.Dataset downloadYou can preview the IOD-Video Dataset with NJU Box, please contact Kailai Zhou (c
2022-05-04 Calay Zhou
What is the IOD task What is the IOD task
1.Insubstantial Object DetectionRecently, the emergence of deep learning based approaches has witnessed significant adva
2022-05-04 Calay Zhou
IOD-Video Dataset Overview IOD-Video Dataset Overview
1.IOD-Video Dataset Visualizationwe construct an IOD-Video dataset comprised of 600 videos (141,017 frames), which cover
2022-05-04 Calay Zhou