Fan Fan, Shi Yilei, Guggemos Tobias, Zhu Xiao Xiang
IEEE Trans Neural Netw Learn Syst. 2024 Dec;35(12):18145-18159. doi: 10.1109/TNNLS.2023.3312170. Epub 2024 Dec 2.
Image classification plays an important role in remote sensing. Earth observation (EO) has inevitably arrived in the big data era, but the high requirement on computation power has already become a bottleneck for analyzing large amounts of remote sensing data with sophisticated machine learning models. Exploiting quantum computing might contribute to a solution to tackle this challenge by leveraging quantum properties. This article introduces a hybrid quantum-classical convolutional neural network (QC-CNN) that applies quantum computing to effectively extract high-level critical features from EO data for classification purposes. Besides that, the adoption of the amplitude encoding technique reduces the required quantum bit resources. The complexity analysis indicates that the proposed model can accelerate the convolutional operation in comparison with its classical counterpart. The model's performance is evaluated with different EO benchmarks, including Overhead-MNIST, So2Sat LCZ42, PatternNet, RSI-CB256, and NaSC-TG2, through the TensorFlow Quantum platform, and it can achieve better performance than its classical counterpart and have higher generalizability, which verifies the validity of the QC-CNN model on EO data classification tasks.
图像分类在遥感中起着重要作用。地球观测(EO)不可避免地进入了大数据时代,但对计算能力的高要求已成为使用复杂机器学习模型分析大量遥感数据的瓶颈。利用量子计算可能有助于通过利用量子特性来解决这一挑战。本文介绍了一种混合量子-经典卷积神经网络(QC-CNN),该网络应用量子计算从EO数据中有效提取高级关键特征以用于分类目的。除此之外,幅度编码技术的采用减少了所需的量子比特资源。复杂度分析表明,与经典模型相比,所提出的模型可以加速卷积运算。通过TensorFlow Quantum平台,使用不同的EO基准对该模型的性能进行了评估,包括俯视MNIST、So2Sat LCZ42、PatternNet、RSI-CB256和NaSC-TG2,并且它可以比经典模型实现更好的性能并具有更高的通用性,这验证了QC-CNN模型在EO数据分类任务上的有效性。