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Robust Data Augmentation Generative Adversarial Network for Object Detection.

Hyungtak Lee1, Seongju Kang2, Kwangsue Chung2

  • 1School of Computer and Information Engineering, Kwangwoon University, Seoul 01897, Republic of Korea.

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Summary
This summary is machine-generated.

Robust Data Augmentation GAN (RDAGAN) enhances object detection by generating realistic images for small datasets. This method improves YOLOv5 fire detection performance by effectively augmenting training data.

Keywords:
data augmentationdisentangled representation learninggenerative adversarial networkimage-to-image translationobject detection

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Area of Science:

  • Computer Vision
  • Machine Learning
  • Artificial Intelligence

Background:

  • Object detection models often require large datasets for optimal performance.
  • Small datasets limit the accuracy and generalizability of object detection models.
  • Generative Adversarial Networks (GANs) show promise for data augmentation but require careful application.

Purpose of the Study:

  • To propose a novel GAN-based data augmentation method, Robust Data Augmentation GAN (RDAGAN), specifically for small object detection datasets.
  • To improve the performance of object detection models, such as YOLOv5, through effective data augmentation.
  • To address limitations in existing GAN-based augmentation by preserving background information and localizing object generation.

Main Methods:

  • RDAGAN employs a pipelined approach with two distinct networks: an object generation network and an image translation network.
  • The object generation network creates object instances based on bounding boxes from the input dataset.
  • The image translation network seamlessly integrates these generated objects into clean background images.

Main Results:

  • Quantitative experiments demonstrated significant improvements in YOLOv5 fire detection performance using RDAGAN-generated data.
  • Comparative evaluations confirmed RDAGAN's ability to preserve background context and accurately localize object generation.
  • Ablation studies validated the critical contribution of each component within the RDAGAN framework.

Conclusions:

  • RDAGAN effectively augments small datasets for object detection tasks, leading to enhanced model performance.
  • The proposed method offers a robust solution for data scarcity issues in object detection.
  • RDAGAN's architecture provides fine-grained control over object generation and integration, outperforming generic augmentation techniques.