In object recognition using deep neural networks (DNNs) in the field of industry, the recognition accuracy rate decreases because of the differences in characteristics between the camera for learning and the camera for recognition. In this research, we solve this problem by statistically modeling the varying pixel intensity value of each recognition camera on the basis of actual acquired learning images. Here, the characteristics of generated images must be similar to images captured by the recognition camera. By using the statistical model, already-captured learning image sets can be converted to virtual images, which are accurately captured by the recognition camera. Through experiments using actual images, we confirmed that the recognition accuracy rate by our method is at least 1.0% higher than that of the conventional method based on Gaussian noise.
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