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Integrating Sensor Models in Deep Learning Boosts Performance: Application to Monocular Depth Estimation in Warehouse Automation

机译:集成在深度学习中的传感器模型提升了性能:应用于仓库自动化中的单眼深度估计

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摘要

Deep learning is the mainstream paradigm in computer vision and machine learning, but performance is usually not as good as expected when used for applications in robot vision. The problem is that robot sensing is inherently active, and often, relevant data is scarce for many application domains. This calls for novel deep learning approaches that can offer a good performance at a lower data consumption cost. We address here monocular depth estimation in warehouse automation with new methods and three different deep architectures. Our results suggest that the incorporation of sensor models and prior knowledge relative to robotic active vision, can consistently improve the results and learning performance from fewer than usual training samples, as compared to standard data-driven deep learning.
机译:深度学习是计算机视觉和机器学习中的主流范例,但在机器人视觉中使用时,性能通常与预期的价格不那么好。问题是,机器人感测本质上是活动的,并且通常,许多应用域的相关数据稀缺。这需要新颖的深度学习方法,可以以较低的数据消耗成本提供良好的性能。我们在此处解决了仓库自动化中的单眼深度估计,具有新方法和三种不同的深层架构。我们的研究结果表明,与机器人主动视觉相比,传感器模型和先验知识,可以始终如一地从少于通常的训练样本中始终如一地改善结果和学习性能,与标准数据驱动的深度学习相比。

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