Practical Object Detection Using Thermal Infrared Image Sensors

Iljoo Baek, Wei Chen, Asish Chakrapani Gumparthi Venkat, R. Rajkumar
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引用次数: 2

Abstract

Reliable object detection is critical for autonomous vehicles (AV). An AV must be safely guided towards its destination under different illumination conditions and avoid obstacles. Thermal infrared (TIR) camera sensors can provide robust image quality under any illumination. Past object detection work using TIR sensors focused on detecting only pedestrians by filtering thermal values. Other approaches leveraged the advantages of a pre-trained RGB-based model. However, the thermal threshold-based filtering can increase false positives depending on the TIR camera capability. Moreover, a large and new TIR training dataset is needed to improve the accuracy of the RGB-based object detection networks. The time and effort to annotate new data are significantly high. In this paper, we propose efficient and practical approaches to provide robust object detection from TIR images. We first reduce the cost of training with new data by using an automated process. To increase the final object detection accuracy, we next propose fusion methods that combine results from dual TIR camera sensors. Finally, we substantiate the practical feasibility of our approach and evaluate the substantial improvement in object detection accuracy. We use various detection networks and datasets on discrete Nvidia GPUs and an Nvidia Xavier embedded platform, commonly used by automotive OEMs.
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应用热红外图像传感器进行实际目标检测
可靠的目标检测对于自动驾驶汽车(AV)至关重要。自动驾驶汽车必须在不同的照明条件下安全驶往目的地,并避开障碍物。热红外(TIR)相机传感器可以在任何照明下提供鲁棒的图像质量。过去使用TIR传感器的目标检测工作主要是通过过滤热值来检测行人。其他方法利用了预训练的基于rgb的模型的优势。然而,基于热阈值的滤波可能会增加误报,这取决于TIR相机的能力。此外,为了提高基于rgb的目标检测网络的精度,还需要一个庞大的、新的TIR训练数据集。注释新数据所花费的时间和精力非常多。在本文中,我们提出了有效和实用的方法来从TIR图像中提供鲁棒的目标检测。我们首先通过使用自动化过程来降低新数据的训练成本。为了提高最终的目标检测精度,我们接下来提出了结合双TIR相机传感器结果的融合方法。最后,我们验证了该方法的实际可行性,并评估了目标检测精度的实质性提高。我们在独立的Nvidia gpu和Nvidia Xavier嵌入式平台上使用各种检测网络和数据集,这些平台通常被汽车oem使用。
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