The lack of effective target regions makes it difficult to perform several visual functions in low intensity light, including pedestrian recognition, and image-to-image translation. In this situation, with the accumulation of high-quality information by the combined use of infrared and visible images it is possible to detect pedestrians even in low light. In this study we are going to use advanced deep learning models like pix2pixGAN and YOLOv7 on LLVIP dataset, containing visible-infrared image pairs for low light vision. This dataset contains 33672 images and most of the images were captured in dark scenes, tightly synchronized with time and location.
翻译:由于缺乏有效的目标区域,很难在低密度光线下履行若干视觉功能,包括行人识别和图像到图像翻译。在这种情况下,通过综合使用红外线图像和可见图像积累高质量信息,即使低光也能探测行人。在这项研究中,我们将在LLLVIP数据集上使用先进的深学习模型,如Pix2pixGAN和YOLOv7,其中包含低光视可见红外图像配对。该数据集包含3672个图像,大多数图像是在黑暗场中拍摄的,与时间和地点同步。