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Journal Article Human Detection using Real-virtual Augmented Dataset
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Authors
Jongmin Lee, Yongwan Kim, Jinsung Choi, Ki-Hong Kim, Daehwan Kim
Issue Date
2023-03
Citation
Journal of Information and Communication Convergence Engineering, v.21, no.1, pp.98-102
ISSN
2234-8255
Publisher
한국정보통신학회
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.56977/jicce.2023.21.1.98
Abstract
This paper presents a study on how augmenting semi-synthetic image data improves the performance of human detection algorithms. In the field of object detection, securing a high-quality data set plays the most important role in training deep learning algorithms. Recently, the acquisition of real image data has become time consuming and expensive; therefore, research using synthesized data has been conducted. Synthetic data haves the advantage of being able to generate a vast amount of data and accurately label it. However, the utility of synthetic data in human detection has not yet been demonstrated. Therefore, we use You Only Look Once (YOLO), the object detection algorithm most commonly used, to experimentally analyze the effect of synthetic data augmentation on human detection performance. As a result of training YOLO using the Penn-Fudan dataset, it was shown that the YOLO network model trained on a dataset augmented with synthetic data provided high-performance results in terms of the Precision-Recall Curve and F1-Confidence Curve.
KSP Keywords
Data Augmentation, Data sets, Detection algorithm, High performance, High-quality, Human Detection, Image data, Network Model, Precision and recall, Quality data, Synthetic data
This work is distributed under the term of Creative Commons License (CCL)
(CC BY NC)
CC BY NC