基于量子并行自组织神经网络(QPSONN)的噪声背景下纯彩色目标提取

S. Bhattacharyya, Pankaj Pal, Sandip Bhowmick
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引用次数: 3

摘要

本文提出了一种量子版本的并行自组织神经网络(QPSONN)架构,用于从噪声角度提取纯彩色物体。QPSONN体系结构以分阶段的方式处理输入噪声纯彩色图像。在初始阶段将纯色输入分离为纯色分量后,这些分量随后被转发到三分量量子多层自组织神经网络(QMLSONN)架构中进行处理,该架构由三个处理层组成,即以量子比特神经元为特征的输入层、隐藏层和输出层。互连权值由单量子比特旋转门表示。在分量输出层的量子测量破坏处理后信息的量子态,利用线性模糊指标的量子反向传播算法调整网络互连权值。最后,在汇聚层对稳定分量输出进行融合,产生提取输出。在具有不同程度高斯噪声的合成扳手图像和实际扳手图像上展示了QPSONN的应用结果。通过与经典PSONN结构的比较,揭示了该QPSONN结构的提取效率和时间效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Quantum Parallel Self Organizing Neural Network (QPSONN) for Pure Color Object Extraction from a Noisy Background
In this article, a quantum version of the parallel self organizing neural network (QPSONN) architecture for extraction of pure color objects from a noisy perspective is proposed. The QPSONN architecture operates in a phased manner to process input noisy pure color images. After the segregation of the pure color inputs into pure color components in the initial phase, these components are subsequently forwarded for processing to three component quantum multilayer self organizing neural network (QMLSONN) architectures composed of three processing layers viz., input, hidden and output layers characterized by qubits based neurons. The interconnection weights are represented by single qub it rotation gates. Quantum measurements at the component output layers destroy the quantum states of the processed information facilitating adjustment of network interconnection weights by a quantum back propagation algorithm using linear indices of fuzziness. Finally, a fusion of the stable component outputs are brought about in a sink layer to produce extracted outputs. Results of application of the QPSONN are demonstrated on a synthetic and a real life spanner image with various degrees of Gaussian noise. A comparison with the classical PSONN architecture reveals the extraction and time efficiency of the proposed QPSONN architecture.
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