基于V1简单细胞模型在D-Wave 2X量子退火计算机上实现的射线成像推断

N. T. Nguyen, Garrett T. Kenyon
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引用次数: 0

摘要

就像大脑必须从2D视网膜图像中推断出3D结构一样,放射科医生的任务是从2D x光片中推断出3D密度。计算机模拟表明,V1简单细胞使用横向抑制来生成稀疏表示,当呈现2D立体图像和视频时,这些稀疏表示对3D深度有选择性。类似地,我们将射线成像推理作为使用二进制神经元之间横向抑制的稀疏编码问题,从而产生适合在量子退火D-Wave 2X(1152量子位)计算机上实现的二次无约束二进制优化(QUBO)问题。我们通过对具有轴(圆柱)对称性的数学定义对象执行离散阿贝尔变换来生成合成射线照片,其径向密度剖面由随机选择的稀疏(近二进制)傅里叶分量集的和给出。我们使用嵌入工具将上述QUBO问题映射到非常稀疏连接的D-Wave嵌合体上,该问题涉及多达47个傅立叶系数之间的密集连接。利用量子推理,我们能够重建相当精确的径向密度分布,即使在我们的合成射线照片中添加足够的噪声,使逆阿贝尔变换无法成立。与最先进的经典QUBO求解器、GUROBI和Hamze-Freitas-Selby算法相比,量子D-Wave 2X在相同的最终精度下要快几个数量级。我们的研究结果表明了一种整合神经形态和量子计算技术的潜在策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radiographic Inference Based on a Model of V1 Simple Cells Implemented on the D-Wave 2X Quantum Annealing Computer
Just as the brain must infer 3D structure from 2D retinal images, radiologists are tasked with inferring 3D densities from 2D X-rays. Computer simulations suggest that V1 simple cells use lateral inhibition to generate sparse representations that are selective for 3D depth when presented with 2D stereo images and video. Analogously, we cast radiographic inference as a sparse coding problem employing lateral inhibition between binary neurons, resulting in a quadratic unconstrained binary optimization (QUBO)problem suitable for implementation on a quantum annealing D-Wave 2X (1152-qubit)computer. We generated synthetic radiographs by performing discrete Abel transforms on mathematically-defined objects possessing axial (cylindrical)symmetry and whose radially density profile was given by the sum of a randomly-chosen, sparse set of (nearly binary)Fourier components. We used embedding tools to map the above QUBO problem, which involved dense connections between up to 47 Fourier coefficients, onto the very sparsely connected D-Wave chimera. Using quantum inference, we were able to reconstruct reasonably accurate radial density profiles even after adding sufficiently noise to our synthetic radiographs to make inverse Abel transforms untenable. Compared to state-of-the-art classical QUBO solvers, GUROBI and the Hamze-Freitas-Selby algorithm, the quantum D-Wave 2X was orders of magnitude faster for the same final accuracy. Our results indicate a potential strategy for integrating neuromorphic and quantum computing techniques.
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