ロボティクス・メカトロニクス講演会講演概要集
Online ISSN : 2424-3124
セッションID: 1P1-A04
会議情報

画像分類器学習における不均衡学習データ拡張のためのCGからの画像変換
小林 和司*藤井 浩光
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会議録・要旨集 認証あり

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Image classification techniques using machine learning have been applied to various applications, however, a large number of images are generally required for training. For example, in the specific fields such as medical, inspection and agricultural tasks, it is sometimes difficult to obtain enough images, and some classes are imbalanced in training dataset. Data augmentation is a solution to increase the amount of data in such classes. In general, data augmentation methods using computer graphics (CG) does not perform well due to their expressions are not enough to recognize objects in real world. In this paper, we propose a data augmentation method by a data transformation using CG. The method transforms CG images modeled as simplified object into real-like images. Furthermore, a classifier is trained with the dataset balanced by the augmented data. In experiments, the performance of the proposed method was verified in classification of real worlds objects.

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