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How to Improve Object Detection in a Driver Assistance System Applying Explainable Deep Learning

机译:如何提高驾驶员辅助系统中的对象检测应用可解释的深度学习

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Reliable perception and detection of objects are one of the fundamental aspects of vehicle autonomy. Although model-based approaches perform well in the area of planning and control, they often fail when applied to perception due to the open-world nature of problems for autonomous vehicles. Therefore, data-driven approaches to object detection and location are likely to be used in both self-driving cars and advanced driver assistance systems. In particular, the deep neural networks proved to be excellent in detection and classification of objects from images, often achieving super-human performance. However, neural networks applied in intelligent vehicles need to be explainable, providing rationales for their decisions. In this paper, we demonstrate how such an interpretation can be provided for a deep learning system that detects specific objects (charging posts) for driver assistance in an electric bus. The interpretation, achieved by visualization of attention heat maps, has twofold use: it allows us to augment the dataset used for training, improving the results, but it also may be used as a tool when fielding the system with the given bus operator. Explaining which parts of the images triggered the decision helps to eliminate misdetections.
机译:对象的可靠感知和检测是车辆自治的基本方面之一。虽然基于模型的方法在规划和控制领域表现良好,但由于自动车辆问题的开放性质本质,它们通常会失败。因此,对象检测和位置的数据驱动方法可能用于自驾驶汽车和高级驾驶员辅助系统。特别是,深度神经网络被证明是从图像的物体的检测和分类中出现优异,通常实现超人类性能。然而,需要可解释在智能车辆中的神经网络,为其决策提供理由。在本文中,我们展示了如何为深入学习系统提供这种解释,该系统可以在电动总线中检测驾驶员辅助的特定对象(充电岗位)。通过可视化热图来实现的解释具有双重用途:它允许我们增强用于训练的数据集,提高结果,但是当使用给定总线运营商的系统进行系统时也可以用作工具。解释图像的哪些部分触发该决定有助于消除误解。

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