1 AIT Asian Institute of Technology

Adaptive lightweight license plate image recovery using deep learning based on generative adversarial network

AuthorWuttinan Sereethavekul
Call NumberAIT Diss. no.ISE-24-02
Subject(s)Machine Learning
Neural networks (Computer science)
Data recovery (Computer science)

NoteA dissertation submitted in partial fulfillment of the requirements for the degree of Doctor of Philosophy in Microelectronics and Embedded Systems
PublisherAsian Institute of Technology
AbstractMany Convolutional Neural Networks (CNNs) methods have already surpassed tradi tional approaches to image restoration tasks. Those CNNs models were usually de signed to enhance single tasks such as an image resolution (super-resolution) or image denoising, but we came up with unconventional goals, that is, multiple recovery tasks from a single network design. Although the Transformer design has recently gained at tention in image recovery tasks, they are too slow. In order to work with license plate images from a traffic camera stream, the system has to be responsive. So, we proposed a fast and lightweight deep learning-based data recovery system using a Generative Ad versarial Network (GAN) principle named License Plate Recovery GAN (LPRGAN). The design has a proposed encoder-decoder style inspired by an autoencoder aided by dual classification networks. This style suits problem-characteristic learning because strong contextual information is retrieved from the down-scaled representations. This proposed system has three main features such as identifying a problem, data recovery, and fail-safe mechanism. The core of system is a data recovery unit (LPRGAN), is used to recover license plate images from multiple degraded input images. Most existing im age restoration systems do not have self-awareness, leading to an inefficiency problem. Unlike existing works, this system has anomaly detection and will only process on a de graded input, reducing workload overhead, improving efficiency and a fail-safe feature that prevents an unexpected bad output. Hence, the proposed algorithm requires less resource to deploy on a low-power machine such as edge computing devices, opening up newpossibilities in on-device computing. Our proposed research can recover several degraded problems up to 720p resolution at 15 frames per second on a single graphic card, 256x128 resolution at 17 frames per second on a CPU-only workstation machine, or 7 frames per second on an ultra-low-power tablet PC.
Year2024
TypeDissertation
SchoolSchool of Engineering and Technology
DepartmentDepartment of Industrial Systems Engineering (DISE)
Academic Program/FoSMicroelectronics (ME)
Chairperson(s)Mongkol Ekpanyapong;
Examination Committee(s)Dailey, Matthew N.;Huynh, Trung Luong;
Scholarship Donor(s)Royal Thai Government;AIT Fellowship;
DegreeThesis (Ph. D.) - Asian Institute of Technology, 2024


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