【WACV 2021 Oral】Asymmetric Contextual Modulation for Infrared Small Target Detection

Abstract

Single-frame infrared small target detection remains a challenge not only due to the scarcity of intrinsic target characteristics but also because of lacking a public dataset. In this paper, we first contribute an open dataset with high-quality annotations to advance the research in this field. We also propose an asymmetric contextual modulation module specially designed for detecting infrared small targets. To better highlight small targets, besides a top-down global contextual feedback, we supplement a bottom-up modulation pathway based on point-wise channel attention for exchanging high-level semantics and subtle low-level details. We report ablation studies and comparisons to state-of-the-art methods, where we find that our approach performs significantly better. Our dataset and code are available online.

Date
Jan 5, 2021 7:00 PM — Jan 8, 2021 8:00 PM
Location
Virtual, Honolulu, Hawaii
Yimian Dai
Yimian Dai
Postdoctoral Fellow

My research interests include image restoration, object detection, and vision-language models.