The ubiquity of camera-embedded devices and the advances in deep learning have stimulated various intelligent mobile video applications. These applications often demand on-device processing of video streams to deliver real-time, high-quality services for privacy and robustness concerns. However, the performance of these applications is constrained by the raw video streams, which tend to be taken with small-aperture cameras of ubiquitous mobile platforms in dim light. Despite extensive low-light video enhancement solutions, they are unfit for deployment to mobile devices due to their complex models and and ignorance of system dynamics like energy budgets. In this paper, we propose AdaEnlight, an energy-aware low-light video stream enhancement system on mobile devices. It achieves real-time video enhancement with competitive visual quality while allowing runtime behavior adaptation to the platform-imposed dynamic energy budgets. We report extensive experiments on diverse datasets, scenarios, and platforms and demonstrate the superiority of AdaEnlight compared with state-of-the-art low-light image and video enhancement solutions.
翻译:摄像装饰装置的普遍存在和深层学习的进步刺激了各种智能移动视频应用,这些应用往往要求视频流的现场设备处理,以便提供实时、高质量的隐私和稳健性服务;然而,这些应用的性能受到原始视频流的制约,这些视频流往往在暗光下被随随随随地移动平台的小孔照相机拍摄而使用;尽管视频增强的视频解决方案非常广泛,但由于其复杂模型和对能源预算等系统动态的无知,它们不适合被安装到移动设备上。我们在本文件中提议在移动设备上建立一个能见度低的视频流增强系统Ada Enlight。它实现了具有竞争性视觉质量的实时视频增强,同时允许运行行为适应平台所施加的动态能源预算。我们报告了关于多种数据集、情景和平台的广泛实验,并展示了Ada Enight与最新低光图像和视频增强解决方案相比的优越性。