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Methods for Accelerating Geospatial Data Processing Using Quantum Computers

机译:使用量子计算机加速地理空间数据处理的方法

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Quantum computing is a transformative technology with the potential to enhance operations in the space industry through the acceleration of optimization and machine learning processes. Machine learning processes enable automated image classification in geospatial data. New quantum algorithms provide novel approaches for solving these problems and a potential future advantage over current, classical techniques. Universal Quantum Computation enables fully general quantum algorithms to be executed, with theoretically proven speed-up over classical algorithms in certain cases. Universal quantum computers are currently being developed by Rigetti Computing and other providers. This paper describes an approach to satellite image classification using a universal quantum enhancement to convolutional neural networks; the quanvolutional neural network. We benchmark these networks using the SAT-4 satellite imagery dataset in order to demonstrate the utility of machine learning techniques in the space industry and the potential advantages that quantum machine learning can offer.
机译:量子计算是一种变换性技术,具有通过加速优化和机器学习过程来增强空间行业的操作。机器学习过程在地理空间数据中启用自动图像分类。新的量子算法提供了解决这些问题的新方法和潜在的经典技术的未来优势。通用量子计算能够执行全面的量子算法,在某些情况下,理论上经过理论上经过古典算法的速度。普遍量子计算机目前正在由Rigetti计算和其他提供商开发。本文介绍了使用通用量子增强对卷积神经网络的卫星图像分类的方法;弓形大学神经网络。我们使用SAT-4卫星图像数据集基准这些网络,以便在空间行业中展示机器学习技术的效用以及量子机器学习可以提供的潜在优势。

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