Cut-and-Paste Dataset Generation for Balancing Domain Gaps in Object Instance Detection
Woo-han Yun, Taewoo Kim, Jaeyeon Lee, Jaehong Kim, Junmo Kim

TL;DR
This paper proposes an advanced cut-and-paste dataset generation method that balances foreground and background domain gaps using GANs and image processing, improving object detection accuracy with limited data.
Contribution
It introduces a novel approach to balance unaligned domain gaps in cut-and-paste datasets by diversifying foregrounds with GANs and simplifying backgrounds, enhancing detection performance.
Findings
Improved object detection accuracy in cluttered environments.
Balancing domain gaps enhances the effectiveness of domain adaptation methods.
Effective with limited seed images.
Abstract
Training an object instance detector where only a few training object images are available is a challenging task. One solution is a cut-and-paste method that generates a training dataset by cutting object areas out of training images and pasting them onto other background images. A detector trained on a dataset generated with a cut-and-paste method suffers from the conventional domain shift problem, which stems from a discrepancy between the source domain (generated training dataset) and the target domain (real test dataset). Though state-of-the-art domain adaptation methods are able to reduce this gap, it is limited because they do not consider the difference of domain gaps of foreground and background. In this study, we present that the conventional domain gap can be divided into two sub-domain gaps for foreground and background. Then, we show that the original cut-and-paste approach…
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