Semantic segmentation of remotely sensed images plays a crucial role in precision agriculture, environmental protection, and economic assessment. In recent years, substantial fine-resolution remote sensing images are available for semantic segmentation. However, due to the complicated information caused by the increased spatial resolution, state-of-the-art deep learning algorithms normally utilize complex network architectures for segmentation, which usually incurs high computational complexity. Specifically, the high-caliber performance of the convolutional neural network (CNN) heavily relies on fine-grained spatial details (fine resolution) and sufficient contextual information (large receptive fields), both of which trigger high computational costs. This crucially impedes their practicability and availability in real-world scenarios that require real-time processing. In this paper, we propose an Attentive Bilateral Contextual Network (ABCNet), a convolutional neural network (CNN) with double branches, with prominently lower computational consumptions compared to the cutting-edge algorithms, while maintaining a competitive accuracy. Code is available at https://github.com/lironui/ABCNet.
翻译:遥感图像的语义分解在精确农业、环境保护和经济评估中发挥着关键作用。近年来,大量精密分辨率遥感图像可用于语义分解。然而,由于空间分辨率提高、最先进的深层学习算法通常利用复杂的网络结构进行分解,通常产生很高的计算复杂性。具体地说,超导神经网络的高空性能严重依赖于细微的空间细节(分辨率)和足够的背景信息(大可接收域),这都引发了高计算成本。这在现实世界需要实时处理的情景中严重妨碍了这些图像的实用性和可用性。在本文件中,我们提议建立一个具有双重分支的高级双边环境网络(ABCNet),其计算消耗量明显低于尖端算法,同时保持有竞争力的准确性。《守则》见https://github.com/lirui/CNABet。