Dual-Integrated Low-Latency Single-Lens Infrared Computational Imaging for Object Detection 文章

ArXiv CS.CV2026-06-02NEWSen作者: Xuquan Wang, Guishuo Yang, Dapeng Yan, Yujie Xing, Xuanyu Qian, Kai Zhang, Xiong Dun, Jiande Sun

摘要

arXiv:2605.21964v2 Announce Type: replace Abstract: Computational imaging enables compact infrared systems, but deep-learning pipelines that combine image reconstruction and object detection often introduce substantial inference latency. Most existing acceleration strategies compress the reconstruction network while overlooking physical priors from the optical path, leaving a trade-off between accuracy and speed. We present Physics-aware Dual-Integrated Network (PDI-Net), a low-latency framework that integrates infrared reconstruction with object detection and further embeds optical priors into the learning process. PDI-Net uses a supervised U-Net during training, while a semi-U-Net encoder shares features directly with a YOLO-based detector during inference, avoiding full image reconstruction.