使用合成图像进行目标检测的数据增强

Hyun-Jun Jo, Yong-Ho Na, Jae-Bok Song
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引用次数: 17

摘要

最近,基于深度学习的研究已经在各个领域进行。深度学习算法需要大量的数据才能获得良好的性能。因此,收集如此大量的高质量数据对于基于深度学习的方法至关重要。数据收集很简单,但非常耗时。为了解决这一难题,本研究提出了一种将背景和目标图像综合生成数据集的方法。通过对从不同视点获得的物体图像进行加噪、改变亮度等后处理,可以生成各种图像。此外,我们不需要手动标注数据集进行目标检测,因为我们可以在合成过程中根据目标图像的位置和大小计算出边界框的参数。使用物体识别的深度学习算法之一的Faster R-CNN来验证所提出的方法。基于该方法生成的数据集的性能与基于真实数据集的性能相当。
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Data augmentation using synthesized images for object detection
Recently deep learning-based research has been conducted in various fields. Deep learning algorithms require vast amounts of data for good performance. Therefore, collecting such a huge amount of high-quality data is crucial to the deep learning-based methods. Data collection is simple but very time-consuming. To cope with this difficulty, in this study we propose a method to generate a dataset by synthesizing the images of background and object. Various images can be generated through post-processes such as adding noise and changing brightness to the images of objects obtained from different viewpoints. Furthermore, we do not need to manually annotate the dataset for object detection because we can calculate the parameters of the bounding boxes from the location and size of object images during the synthesis process. Faster R-CNN, one of the deep learning algorithms for object recognition, was used to verify the proposed method. The performance based on the dataset generated by the proposed method is comparable to that based on the real dataset.
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