Point2Depth: a GAN-based Contrastive Learning Approach for mmWave Point Clouds to Depth Images Transformation

Walter Brescia, Giuseppe Roberto, Vito Andrea Racanelli, S. Mascolo, L. D. Cicco
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Abstract

The perception of the environment is essential in mobile robotics applications as it enables the proper planning and execution of efficient navigation strategies. Optical sensors offer many advantages, ranging from precision to understandability, but they can be significantly impacted by lighting conditions and the composition of the surroundings. In contrast, millimeter wave (mmWave) radar sensors are not influenced by such adverse condition and are capable of detecting partially or fully obstructed obstacles, resulting in more informative point clouds. However, such point clouds are often sparse and noisy. This work presents Point2Depth, a cross-modal contrastive learning approach based on Conditional Generative Adversarial Networks (cGANs) to transform sparse point clouds from mmWave sensors into depth images, preserving the distance information while producing a more comprehensible representation. An extensive data collection phase was conducted to create a rich multimodal dataset with each information associated with a timestamp and a pose. The experimental results demonstrate that the approach is able to produce accurate depth images, even in challenging environmental conditions.
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Point2Depth:一种基于gan的毫米波点云深度图像转换的对比学习方法
对环境的感知在移动机器人应用中是必不可少的,因为它使正确的规划和执行有效的导航策略成为可能。光学传感器提供了许多优点,从精度到可理解性,但它们会受到照明条件和周围环境组成的显著影响。相比之下,毫米波(mmWave)雷达传感器不受这种不利条件的影响,能够探测部分或完全受阻的障碍物,从而产生更多信息的点云。然而,这样的点云往往是稀疏和嘈杂的。这项工作提出了Point2Depth,一种基于条件生成对抗网络(cgan)的跨模态对比学习方法,将稀疏的点云从毫米波传感器转换为深度图像,在产生更易于理解的表示的同时保留距离信息。进行了大量的数据收集阶段,以创建丰富的多模态数据集,其中每个信息都与时间戳和姿态相关联。实验结果表明,即使在具有挑战性的环境条件下,该方法也能产生准确的深度图像。
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