期刊论文详细信息
Structure-Aware Image Translation-Based Long Future Prediction for Enhancement of Ground Robotic Vehicle Teleoperation
Article; Early Access
关键词: GENERATIVE ADVERSARIAL NETWORKS;    AGREEMENT;   
DOI  :  10.1002/aisy.202200439
来源: SCIE
【 摘 要 】

Predicting future frames through image-to-image translation and using these synthetically generated frames for high-speed ground vehicle teleoperation is a new concept to address latency and enhance operational performance. In the immediate previous work, the image quality of the predicted frames was low and a lot of scene detail was lost. To preserve the structural details of objects and improve overall image quality in the predicted frames, several novel ideas are proposed herein. A filter has been designed to remove noise from dense optical flow components resulting from frame rate inconsistencies. The Pix2Pix base network has been modified and a structure-aware SSIM-based perpetual loss function has been implemented. A new dataset of 20 000 training input images and 2000 test input images with a 500 ms delay between the target and input frames has been created. Without any additional video transformation steps, the proposed improved model achieved PSNR of 23.1; SSIM of 0.65; and MS-SSIM of 0.80, a substantial improvement over our previous work. A Fleiss' kappa score of >0.40 (0.48 for the modified network and 0.46 for the perpetual loss function) proves the reliability of the model.

【 授权许可】

   

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