Mridul GuptaJonathan ChanMitchell KroussG. FurlichPaul MartensMoses W. ChanMary L. ComerEdward J. Delp
Detection of small, point targets is fundamental in applications such as early warning systems, surveillance, astronomy, and microscopy. The presence of noise and clutter can make it challenging to detect small targets while minimizing false detections. This paper presents a method for infrared small target detection using convolutional neural networks. The proposed method augments a conventional space-based detection processing chain with a lightweight neural network to predict the probability that a detection is a target. The proposed network is trained on 7 × 7 pixel windows using both the image sequence and the respective background-subtracted images. Results show that our method improves probability of detection at low false detection rates.
Y.D. LiFeng HeQingjiong ZhangWei Zhang
Yi ZhangBingkun NianYan ZhangYu ZhangFeng LingYu ZhangYu ZhangFeng Ling
Wenxiong ChengChunmei WangHanbing LengHuixin ZhouWanting WangHanlin QIN
Tingting CuiLinbo TangYong HengZhenzhen LiJinghong Nan