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Basic Study for Transfer Learning for Autonomous Driving in Car Race of Model Car

机译:车型汽车赛车自主驾驶转移学习的基础研究

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Reinforcement learning, deep learning, and deep reinforcement learning can effectively acquire action rules for the autonomous motion of objects. However, some researchers have reported that the machine learning process requires a large amount of learning time. Besides, the process needs to consider the similarity of the environment between the training target and the test target. There is no such thing as driving only on a course learned in advance in actual autonomous driving. In this study, we have used a transfer learning algorithm for autonomous drivings for model cars. The training target for acquiring the learning model and the actual driving courses are changed. In this study, we report on the effectiveness of transfer learning using a model car as the basis for a learning model acquired by reinforcement learning.
机译:强化学习,深度学习和深度加固学习可以有效地获取对象的自主运动的行动规则。 然而,一些研究人员报告说,机器学习过程需要大量的学习时间。 此外,该过程需要考虑训练目标与测试目标之间的环境的相似性。 只有在实际自动驾驶中提前学习的课程中没有驾驶。 在这项研究中,我们使用了模型汽车的自主驱动传递学习算法。 收购学习模式和实际驾驶课程的培训目标发生了变化。 在这项研究中,我们报告了使用模型汽车作为通过加固学习获得的学习模式的转移学习的有效性。

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