IN-VEHICLE CAMERA IMAGES PREDICTION BY GENERATIVE ADVERSARIAL NETWORK

J. Watanabe, T. Gonsalves
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Abstract

Moving object detection is one of the fundamental technologies necessary to realize autonomous driving. In this study, we propose the prediction of an in-vehicle camera image by Generative Adversarial Network (GAN). From the past images input to the system, it predicts the future images at the output. By predicting the motion of a moving object, it can predict the destination of the moving object. The proposed model can predict the motion of moving objects such as cars, bicycles, and pedestrians.
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基于生成对抗网络的车载摄像头图像预测
运动目标检测是实现自动驾驶的基础技术之一。在这项研究中,我们提出了一种基于生成对抗网络(GAN)的车载摄像头图像预测方法。从过去的图像输入到系统,它预测未来的图像输出。通过预测运动物体的运动,它可以预测运动物体的目的地。该模型可以预测汽车、自行车和行人等运动物体的运动。
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PARALLEL VERIFICATION EXECUTION WITH VERIFY ALGEBRA IN A CLOUD ENVIRONMENT THE EFFECT OF VISUALIZING ROLE OF VARIABLE IN OBJECT ORIENTED PROGRAMMING UNDERSTANDING DETECTION OF HATE SPEECH IN SOCIAL NETWORKS: A SURVEY ON MULTILINGUAL CORPUS EFFECTIVENESS OF U-NET IN DENOISING RGB IMAGES IN-VEHICLE CAMERA IMAGES PREDICTION BY GENERATIVE ADVERSARIAL NETWORK
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