Wide-field and high-resolution (HR) imaging is essential for various applications such as aviation reconnaissance, topographic mapping and safety monitoring. The existing techniques require a large-scale detector array to capture HR images of the whole field, resulting in high complexity and heavy cost. In this work, we report an agile wide-field imaging framework with selective high resolution that requires only two detectors. It builds on the statistical sparsity prior of natural scenes that the important targets locate only at small regions of interests (ROI), instead of the whole field. Under this assumption, we use a short-focal camera to image wide field with a certain low resolution, and use a long-focal camera to acquire the HR images of ROI. To automatically locate ROI in the wide field in real time, we propose an efficient deep-learning based multiscale registration method that is robust and blind to the large setting differences (focal, white balance, etc) between the two cameras. Using the registered location, the long-focal camera mounted on a gimbal enables real-time tracking of the ROI for continuous HR imaging. We demonstrated the novel imaging framework by building a proof-of-concept setup with only 1181 gram weight, and assembled it on an unmanned aerial vehicle for air-to-ground monitoring. Experiments show that the setup maintains 120$^{\circ}$ wide field-of-view (FOV) with selective 0.45$mrad$ instantaneous FOV.
翻译:广域和高分辨率(HR)成像对航空侦察、地形测绘和安全监测等各种应用至关重要。现有技术需要大型探测器阵列,以获取整个实地的HR图像,从而产生高度复杂和高昂的成本。在这项工作中,我们报告一个灵活的广域成像框架,有选择性的高分辨率,只需要两个探测器。它建立在重要目标仅位于小利益区域而不是整个实地的自然景点之前的统计宽度之上。根据这一假设,我们使用一个短焦照相机以某种低分辨率拍摄广域图象,并使用长焦照相机获取ROI的HR图像。为了实时自动定位广域的ROI,我们建议一种基于高分辨率的高效深度广域成像框架,它只需要两个摄像头之间的大环境差异(玻璃、白平衡等),它以注册地点为基础,安装在Gimbal安装的长宽度摄像机可以实时跟踪ROI的连续的HR成像。我们展示了一个新型成像框架,即用120个定型的直流成像仪在空中定位系统显示系统,而仅安装在空中定位的100至地面上。