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Main Authors: Kim, Hyungmin, Kim, Donghun, Ahn, Pyunghwan, Suh, Sungho, Cho, Hansang, Kim, Junmo
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2401.10050
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author Kim, Hyungmin
Kim, Donghun
Ahn, Pyunghwan
Suh, Sungho
Cho, Hansang
Kim, Junmo
author_facet Kim, Hyungmin
Kim, Donghun
Ahn, Pyunghwan
Suh, Sungho
Cho, Hansang
Kim, Junmo
contents While deep neural networks have achieved remarkable performance, data augmentation has emerged as a crucial strategy to mitigate overfitting and enhance network performance. These techniques hold particular significance in industrial manufacturing contexts. Recently, image mixing-based methods have been introduced, exhibiting improved performance on public benchmark datasets. However, their application to industrial tasks remains challenging. The manufacturing environment generates massive amounts of unlabeled data on a daily basis, with only a few instances of abnormal data occurrences. This leads to severe data imbalance. Thus, creating well-balanced datasets is not straightforward due to the high costs associated with labeling. Nonetheless, this is a crucial step for enhancing productivity. For this reason, we introduce ContextMix, a method tailored for industrial applications and benchmark datasets. ContextMix generates novel data by resizing entire images and integrating them into other images within the batch. This approach enables our method to learn discriminative features based on varying sizes from resized images and train informative secondary features for object recognition using occluded images. With the minimal additional computation cost of image resizing, ContextMix enhances performance compared to existing augmentation techniques. We evaluate its effectiveness across classification, detection, and segmentation tasks using various network architectures on public benchmark datasets. Our proposed method demonstrates improved results across a range of robustness tasks. Its efficacy in real industrial environments is particularly noteworthy, as demonstrated using the passive component dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2401_10050
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publishDate 2024
record_format arxiv
spellingShingle ContextMix: A context-aware data augmentation method for industrial visual inspection systems
Kim, Hyungmin
Kim, Donghun
Ahn, Pyunghwan
Suh, Sungho
Cho, Hansang
Kim, Junmo
Computer Vision and Pattern Recognition
While deep neural networks have achieved remarkable performance, data augmentation has emerged as a crucial strategy to mitigate overfitting and enhance network performance. These techniques hold particular significance in industrial manufacturing contexts. Recently, image mixing-based methods have been introduced, exhibiting improved performance on public benchmark datasets. However, their application to industrial tasks remains challenging. The manufacturing environment generates massive amounts of unlabeled data on a daily basis, with only a few instances of abnormal data occurrences. This leads to severe data imbalance. Thus, creating well-balanced datasets is not straightforward due to the high costs associated with labeling. Nonetheless, this is a crucial step for enhancing productivity. For this reason, we introduce ContextMix, a method tailored for industrial applications and benchmark datasets. ContextMix generates novel data by resizing entire images and integrating them into other images within the batch. This approach enables our method to learn discriminative features based on varying sizes from resized images and train informative secondary features for object recognition using occluded images. With the minimal additional computation cost of image resizing, ContextMix enhances performance compared to existing augmentation techniques. We evaluate its effectiveness across classification, detection, and segmentation tasks using various network architectures on public benchmark datasets. Our proposed method demonstrates improved results across a range of robustness tasks. Its efficacy in real industrial environments is particularly noteworthy, as demonstrated using the passive component dataset.
title ContextMix: A context-aware data augmentation method for industrial visual inspection systems
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.10050