Litcius/Paper detail

Quantum–Classical Image Processing for Scene Classification

Avinash Chalumuri, Raghavendra Kune, S. Kannan, B. S. Manoj

2022IEEE Sensors Letters17 citationsDOI

Abstract

Deep learning-based convolutional neural network (CNN) models are prominent in processing and analyzing sensor signal data such as images for classification. Data augmentation is a powerful technique used in training such models to avoid overfitting and improve accuracy. This letter proposes a data augmentation technique using a quantum circuit for image data. The proposed quantum circuit is suitable to implement on real hardware provided by IBM QX platform. In comparison with other classical data augmentation techniques, the proposed technique increased the prediction accuracy of the CNN from 68.65% to 76.03%. However, CNN models for image classification use many parameters during the training process. Quantum computers can efficiently handle large-scale data inputs using qubits for information processing. Hence, we also propose a hybrid quantum-classical CNN model (HQCNN) for scene classification. The proposed model uses a combination of CNN layers and quantum layers to process images. The proposed HQCNN reduces parameters used for training as quantum layers are used in the model. Our experimental results show that the proposed HQCNN can classify the scenes in UC Merced land-use dataset with an accuracy of 85.28%, compared to the other models.

Topics & Concepts

OverfittingComputer scienceConvolutional neural networkArtificial intelligenceProcess (computing)Deep learningQubitQuantumPattern recognition (psychology)Contextual image classificationImage processingEncoding (memory)Artificial neural networkImage (mathematics)PhysicsQuantum mechanicsOperating systemQuantum Computing Algorithms and ArchitectureQuantum Information and CryptographyQuantum-Dot Cellular Automata
Quantum–Classical Image Processing for Scene Classification | Litcius