Autonomous vehicle simulation has the advantage of testing algorithms in various environment variables and scenarios without wasting time and resources, however, there is a visual gap with the real-world. In this paper, we trained DCLGAN to realistically convert the image of the CARLA simulator and evaluated the effect of the Sim2Real conversion focusing on the LKAS (Lane Keeping Assist System) algorithm. In order to avoid the case where the lane is translated distortedly by DCLGAN, we found the optimal training hyperparameter using FSIM (feature-similarity). After training, we built a system that connected the DCLGAN model with CARLA and AV in real-time. Then, we collected data (e.g. images, GPS) and analyzed them using the following four methods. First, image reality was measured with FID, which we verified quantitatively reflects the lane characteristics. CARLA images that passed through DCLGAN had smaller FID values than the original images. Second, lane segmentation accuracy through ENet-SAD was improved by DCLGAN. Third, in the curved route, the case of using DCLGAN drove closer to the center of the lane and had a high success rate. Lastly, in the straight route, DCLGAN improved lane restoring ability after deviating from the center of the lane as much as in reality.
翻译:自动车辆模拟具有在不浪费时间和资源的情况下测试各种环境变量和情景的算法的优势,然而,与现实世界存在视觉差距。在本论文中,我们培训了DCLGAN,以便现实地转换CARLA模拟器图像,并评估Sim2Real转换的影响,重点是LKAS(Lane keeping Aformation Sycraft)算法。为了避免被DCLGAN扭曲了航道的情况,我们发现使用FSIM(相对相似性)进行的最佳培训超参数。在培训后,我们建立了一个系统,将DCLGAN模型与CARLA和AV连接在一起,然后,我们用四种方法收集数据(例如图像,GPS)并分析Sim2Real转换Sim2Real 转换的效果。首先,我们用FID测量了图像真实性反映航道特点的图像。通过DCLGANAN的CARA图像比原始图像的FID值要小。第二,通过ED-SADAD的分路精度由DCLAN第三,在更接近的轨道中路段中,在恢复了直路段后,在使用DCAAN中心,在最接近的中,在恢复中,在恢复了DCANCLR的中,在恢复了直航路段的中,在恢复了直路。