Emma: An accurate, efficient, and multi-modality strategy for autonomous vehicle angle prediction

Keqi Song;Tao Ni;Linqi Song;Weitao Xu
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Abstract

Autonomous driving and self-driving vehicles have become the most popular selection for customers for their convenience. Vehicle angle prediction is one of the most prevalent topics in the autonomous driving industry, that is, realizing real-time vehicle angle prediction. However, existing methods of vehicle angle prediction utilize only single-modal data to achieve model prediction, such as images captured by the camera, which limits the performance and efficiency of the prediction system. In this paper, we present Emma, a novel vehicle angle prediction strategy that achieves multi-modal prediction and is more efficient. Specifically, Emma exploits both images and inertial measurement unit (IMU) signals with a fusion network for multi-modal data fusion and vehicle angle prediction. Moreover, we design and implement a few-shot learning module in Emma for fast domain adaptation to varied scenarios (e.g., different vehicle models). Evaluation results demonstrate that Emma achieves overall 97.5% accuracy in predicting three vehicle angle parameters (yaw, pitch, and roll), which outperforms traditional single-modalities by approximately 16.7%–36.8%. Additionally, the few-shot learning module presents promising adaptive ability and shows overall 79.8% and 88.3% accuracy in 5-shot and 10-shot settings, respectively. Finally, empirical results show that Emma reduces energy consumption by 39.7% when running on the Arduino UNO board.
Emma:一种准确、高效、多模态的自动驾驶汽车角度预测策略
:自动驾驶和自动驾驶汽车因其便利性而成为最受客户欢迎的选择。车辆角度预测是自动驾驶行业最流行的话题之一,即实现实时的车辆角度预测。然而,现有的车辆角度预测方法仅利用单一模态数据来实现模型预测,例如由相机捕获的图像,这限制了预测系统的性能和效率。在本文中,我们提出了一种新的车辆角度预测策略Emma,它实现了多模态预测,并且更有效。具体而言,Emma利用图像和惯性测量单元(IMU)信号与融合网络进行多模态数据融合和车辆角度预测。此外,我们在Emma中设计并实现了一个少量学习模块,用于快速适应各种场景(例如,不同的车型)。评估结果表明,Emma在预测三个车辆角度参数(偏航、俯仰和侧倾)方面的总体准确率为97.5%,比传统的单一模态高出约16.7%-36.8%。此外,少镜头学习模块具有良好的自适应能力,在5镜头和10镜头设置中的总体准确率分别为79.8%和88.3%。最后,实证结果表明,Emma在Arduino UNO板上运行时,能耗降低了39.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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