Image Super-Resolution (SR) provides a promising technique to enhance the image quality of low-resolution optical sensors, facilitating better-performing target detection and autonomous navigation in a wide range of robotics applications. It is noted that the state-of-the-art SR methods are typically trained and tested using single-channel inputs, neglecting the fact that the cost of capturing high-resolution images in different spectral domains varies significantly. In this paper, we attempt to leverage complementary information from a low-cost channel (visible/depth) to boost image quality of an expensive channel (thermal) using fewer parameters. To this end, we first present an effective method to virtually generate pixel-wise aligned visible and thermal images based on real-time 3D reconstruction of multi-modal data captured at various viewpoints. Then, we design a feature-level multispectral fusion residual network model to perform high-accuracy SR of thermal images by adaptively integrating co-occurrence features presented in multispectral images. Experimental results demonstrate that this new approach can effectively alleviate the ill-posed inverse problem of image SR by taking into account complementary information from an additional low-cost channel, significantly outperforming state-of-the-art SR approaches in terms of both accuracy and efficiency.
翻译:高分辨率图像超分辨率(SR)是提高低分辨率光学传感器图像质量的有希望的技术,有助于在广泛的机器人应用中更好地进行目标探测和自主导航,注意到最先进的SR方法通常使用单一通道投入来培训和测试,忽视在不同光谱域捕获高分辨率图像的成本差异很大这一事实,在本文中,我们试图利用低成本频道(可见/深度)的补充信息,利用较少的参数提高昂贵频道(热)的图像质量,为此,我们首先提出一种有效的方法,在实时3D对各种视角所捕捉的多模式数据进行重建的基础上,实际上生成像素相对齐的可见和热图像。然后,我们设计一个地级多光谱聚合残余网络模型,通过适应性地整合多光谱图像中显示的共振动特征,对热图像进行高准确性SR。实验结果表明,这种新办法能够有效地缓解高清晰的图像反向问题,方法是考虑到从新的低频谱、低频谱术语中获取的补充性、高频频谱、高频谱术语。