Images captured in real-world applications in remote sensing, image or video retrieval, and outdoor surveillance suffer degraded quality introduced by poor weather conditions. Conditions such as rain and mist, introduce artifacts that make visual analysis challenging and limit the performance of high-level computer vision methods. For time-critical applications where a rapid response is necessary, it becomes crucial to develop algorithms that automatically remove rain, without diminishing the quality of the image contents. This article aims to develop a novel quaternion multi-stage multiscale neural network with a self-attention module called QSAM-Net to remove rain streaks. The novelty of this algorithm is that it requires significantly fewer parameters by a factor of 3.98, over prior methods, while improving visual quality. This is demonstrated by the extensive evaluation and benchmarking on synthetic and real-world rainy images. This feature of QSAM-Net makes the network suitable for implementation on edge devices and applications requiring near real-time performance. The experiments demonstrate that by improving the visual quality of images. In addition, object detection accuracy and training speed are also improved.
翻译:在遥感、图像或视频检索等现实世界应用中捕捉到的图像,以及由于恶劣的天气条件而导致室外监视质量退化。雨水和雾等条件,引进了使视觉分析具有挑战性的人工制品,并限制了高级计算机视觉方法的性能。对于需要快速反应的具有时间重要性的应用,开发自动除雨的算法,而不降低图像内容的质量就变得至关重要。这篇文章的目的是开发一个新型的四环多级多级神经网络,其自省模块称为QSAM-Net,以去除雨量。这种算法的新颖之处是,在改进视觉质量的同时,需要大大减少3.98倍的参数,同时提高视觉质量。关于合成和现实世界的雨季图像的广泛评估和基准表明,QSAM-Net的这一特征使网络适合在边缘装置和需要近实时性表现的应用上实施。实验表明,通过提高图像的视觉质量,物体探测精度和培训速度也得到了提高。