DeepBEV:一种用于鸟瞰生成的条件对抗网络

Helmi Fraser, Sen Wang
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引用次数: 1

摘要

获得自动驾驶汽车周围环境的有意义的、可解释的、紧凑的表示对于有效运行和安全至关重要。本文提出了一种解决方案,通过自上而下、以自我为中心的鸟瞰图来表示语义上重要的对象。这项工作的新颖之处在于将这个问题表述为一个对抗性学习任务,分配一个生成器模型来生成鸟瞰图表示,这些表示似乎足够可信,可以被误认为是一个基本的真实样本。这是通过使用基于Wasserstein生成对抗网络的模型来实现的,该模型以单目RGB图像和相应的边界框的对象检测为条件。大量的实验表明,与严格监督的基准模型相比,我们的模型对新数据的鲁棒性更强,而规模只是次优模型的一小部分。
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DeepBEV: A Conditional Adversarial Network for Bird's Eye View Generation
Obtaining a meaningful, interpretable yet compact representation of the immediate surroundings of an autonomous vehicle is paramount for effective operation as well as safety. This paper proposes a solution to this by representing semantically important objects from a top-down, ego-centric bird's eye view. The novelty in this work is from formulating this problem as an adversarial learning task, tasking a generator model to produce bird's eye view representations which are plausible enough to be mistaken as a ground truth sample. This is achieved by using a Wasserstein Generative Adversarial Network based model conditioned on object detections from monocular RGB images and the corresponding bounding boxes. Extensive experiments show our model is more robust to novel data compared to strictly supervised benchmark models, while being a fraction of the size of the next best.
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