Automated Image Recognition Framework
Quang-Binh Nguyen, Trong-Vu Hoang, Ngoc-Do Tran, Tam V. Nguyen, Minh-Triet Tran, Trung-Nghia Le

TL;DR
The paper introduces AIR, a framework that uses generative AI to create and augment datasets for training deep image recognition models, reducing manual effort and improving performance.
Contribution
It presents a novel automated framework combining data synthesis, prompt engineering, and distribution adjustment to generate high-quality datasets for image recognition tasks.
Findings
Generated datasets improve deep learning model accuracy.
User study scored 4.4 out of 5, indicating high satisfaction.
Framework effectively reduces manual data annotation efforts.
Abstract
While the efficacy of deep learning models heavily relies on data, gathering and annotating data for specific tasks, particularly when addressing novel or sensitive subjects lacking relevant datasets, poses significant time and resource challenges. In response to this, we propose a novel Automated Image Recognition (AIR) framework that harnesses the power of generative AI. AIR empowers end-users to synthesize high-quality, pre-annotated datasets, eliminating the necessity for manual labeling. It also automatically trains deep learning models on the generated datasets with robust image recognition performance. Our framework includes two main data synthesis processes, AIR-Gen and AIR-Aug. The AIR-Gen enables end-users to seamlessly generate datasets tailored to their specifications. To improve image quality, we introduce a novel automated prompt engineering module that leverages the…
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Taxonomy
TopicsBrain Tumor Detection and Classification
