The computer vision community has paid much attention to the development of visible image super-resolution (SR) using deep neural networks (DNNs) and has achieved impressive results. The advancement of non-visible light sensors, such as acoustic imaging sensors, has attracted much attention, as they allow people to visualize the intensity of sound waves beyond the visible spectrum. However, because of the limitations imposed on acquiring acoustic data, new methods for improving the resolution of the acoustic images are necessary. At this time, there is no acoustic imaging dataset designed for the SR problem. This work proposed a novel backprojection model architecture for the acoustic image super-resolution problem, together with Acoustic Map Imaging VUB-ULB Dataset (AMIVU). The dataset provides large simulated and real captured images at different resolutions. The proposed XCycles BackProjection model (XCBP), in contrast to the feedforward model approach, fully uses the iterative correction procedure in each cycle to reconstruct the residual error correction for the encoded features in both low- and high-resolution space. The proposed approach was evaluated on the dataset and showed high outperformance compared to the classical interpolation operators and to the recent feedforward state-of-the-art models. It also contributed to a drastically reduced sub-sampling error produced during the data acquisition.
翻译:计算机视觉界非常关注利用深神经网络开发可见图像超分辨率(SR)的问题,并取得了令人印象深刻的成果。声像传感器等非可见光传感器的进步引起了人们的极大关注,因为这些传感器使人们能够将声波的强度直观到可见光谱之外。然而,由于对获取声学数据的限制,改进声学图像分辨率的新方法是必要的。目前,没有为SR问题设计的声像成像数据集。这项工作为声学图像超分辨率问题提出了一个新的回射模型架构,同时提出了声像成像VUB-ULB数据集(AMIVU)等非可见光传感器的进步。数据集在不同分辨率上提供了大型模拟和真实捕捉到的图像。拟议的XCBP模型(XCBP)与进取前式模型方法不同,充分利用每个周期的迭代校正程序来重新校正低分辨率和高分辨率空间的加密特征的残余错误。在数据集和高分辨率模型获取期间,对数据设置的拟议方法进行了评估,并展示了高分辨率模型的高级外演化模型,同时向古典间隔置模型提供了高性模型。