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SynDistNet: Self-Supervised Monocular Fisheye Camera Distance Estimation Synergized with Semantic Segmentation for Autonomous Driving

机译:Syndistnet:自我监督单眼鱼眼相机距离估计协同自主驾驶语义分割

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摘要

State-of-the-art self-supervised learning approaches for monocular depth estimation usually suffer from scale ambiguity. They do not generalize well when applied on distance estimation for complex projection models such as in fisheye and omnidirectional cameras. This paper introduces a novel multi-task learning strategy to improve self-supervised monocular distance estimation on fisheye and pinhole camera images. Our contribution to this work is threefold: Firstly, we introduce a novel distance estimation network architecture using a self-attention based encoder coupled with robust semantic feature guidance to the decoder that can be trained in a one-stage fashion. Secondly, we integrate a generalized robust loss function, which improves performance significantly while removing the need for hyperparameter tuning with the reprojection loss. Finally, we reduce the artifacts caused by dynamic objects violating static world assumptions using a semantic masking strategy. We significantly improve upon the RMSE of previous work on fisheye by 25% reduction in RMSE. As there is little work on fisheye cameras, we evaluated the proposed method on KITTI using a pinhole model. We achieved state-of-the-art performance among self-supervised methods without requiring an external scale estimation.
机译:单眼深度估计的最先进的自我监督的学习方法通​​常遭受规模歧义。当施加在Fisheye和全向相机的复杂投影模型上施加距离估计时,它们不会概括。本文介绍了一种新的多任务学习策略,以改善鱼眼和针孔相机图像的自我监督单眼距离估计。我们对这项工作的贡献是三倍:首先,我们使用基于自我关注的编码器介绍一个新颖的距离估计网络架构,耦合到可在一级方式培训的解码器的鲁棒语义特征指导。其次,我们整合了广泛的稳健损失功能,这在删除了具有重新注入损耗的高度参与的需求的同时显着提高了性能。最后,我们使用语义屏蔽策略违反静态世界假设的动态对象引起的伪像。我们显着改善了以前对鱼眼工作的RMSE减少了25%的RMSE。由于Fisheye相机几乎没有工作,我们使用针孔模型评估了在基蒂上提出的方法。我们在自我监督方法中实现了最先进的性能,而无需外部尺度估计。

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