In general, taking a high-speed object such as projectiles with a low-speed camera are accompanied by artifacts called so-called Motion blur. Motion blur is a phenomenon that the boundaries of a moving object diffuse unclearly. Motion blur is divided into a ‘captured motion blur’ and ‘display motion blur’. The formal occurs when the object moves faster than the camera shutter speed, and the later occurs due to the limitations of the display. In this study, we focus on the captured motive blur caused by the shutter speed of the camera. Generally, leveraging expensive high-speed camera equipment or using a de-blurring algorithm has been proposed to remove this type of blur. However high-speed cameras are too costly for the End-user to use, and de-blur algorithms have a problem that it takes quite a while to get remarkable results. Therefore we propose a method that uses a machine learning technique to obtain clear images even in low-end single RGB cameras with low frame rate.
CITATION STYLE
Lee, M. G., Lu, C. N., Chung, D., Foon, W. J., Ko, I., Lim, K. Y., & Park, J. (2020). Anti-motion Blur Method Using Conditional Adversarial Networks. In Lecture Notes in Electrical Engineering (Vol. 536 LNEE, pp. 332–337). Springer. https://doi.org/10.1007/978-981-13-9341-9_57
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