图像分类的量子生成对抗网络和量子神经网络

Arun Pandian J, K. K., Vadem Chandu Mohan, Pulibandla Hari Krishna, Edagottu Govardhan
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引用次数: 0

摘要

本文提出了一种利用投影量子核特征进行图像分类的量子神经网络(QNN)。QCNN由四个密集层组成;第一层收集量子数据作为输入,第四层产生分类输出。此外,利用补丁技术开发了量子生成咨询网络(QGAN),以增强图像数据集中的样本数量。所提出的QNN和QGAN是使用量子滤波器构造的。使用MNIST手写数字数据集训练和测试QNN模型在图像分类上的性能。使用数字0和6从MNIST手写数字数据库创建了一个二进制分类数据集。QGAN在数字0和6类上生成221个样本。生成的样本被添加到QNN模型的训练数据集中。过滤后的MNIST手写数据集的大小从13779个样本扩展到14000个样本。有12000张图片被分成训练用的和2000张图片被分成测试用的。采用主成分分析技术对数据进行降维处理。QNN在增强的数据集上使用GPU环境进行训练。QNN模型的测试准确率为98.65%;它优于传统的神经网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantum Generative Adversarial Network and Quantum Neural Network for Image Classification
In this paper, a Quantum Neural Network (QNN) has been proposed using the Projected Quantum Kernel feature for an image classification task. The QCNN consists of four dense layers; the first layer collects the quantum data as an input and the fourth layer produced the classification output. Moreover, a Quantum Generative Advisory Network (QGAN) has been developed using the patching technique for enhancing the number of samples in the image dataset. The proposed QNN and QGAN are constructed using quantum filters. The MNIST handwritten digit dataset was used to train and test the QNN model performance on image classification. A binary classification dataset was created from the MNIST handwritten digit database using digits 0 and 6. The QGAN generated 221 samples on digits 0 and 6 classes. The generated samples were added to the training dataset for the QNN model. The size of the Filtered MNIST handwritten dataset was extended from 13779 to 14000 samples. There are 12,000 images are split for training and 2,000 images for testing. The principal component analysis technique was used to reduce the dimension of the data. The QNN was trained on the enhanced dataset using a GPU environment. The testing accuracy of the QNN model was 98.65 percent; it is superior to the traditional neural network.
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