Realtime Multispectral Pedestrian Detection With Visible and Far-Infrared Under Ambient Temperature Changing

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Masato Okuda;Kota Yoshida;Takeshi Fujino
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Abstract

In recent intelligent transportation systems (ITS), it is important to recognize pedestrians and avoid collisions. Various sensors are used to detect pedestrians, and some research on pedestrian detection uses a visible light (RGB) camera and a far-infrared (FIR) camera. FIR cameras are significantly affected by ambient temperatures such as summer and winter. However, few studies have focused on this property when evaluating pedestrian detection accuracy. Therefore, this paper investigates the effect of temperature change in real-time multispectral pedestrian detection. We created an original dataset with three subsets, Hot, Intermediate, and Cold, and evaluated temperature effects by changing the subsets during training and testing. We first evaluated YOLOv8s-4ch, which simply extended the input layer of YOLOv8 from 3 channels of RGB to 4 channels of RGB-FIR. To further improve detection performance, we built a new model called YOLOv8s-2stream. This model has two backbones for RGB and FIR, and fuses their feature maps in each resolution. We found that the model trained on a specific temperature subset dropped the test accuracy in other subsets. On the other hand, when training using a Mix set covering all temperature sets (Hot, Inter., Cold), the model achieved the highest accuracy through all conditions. Moreover, our YOLOv8s-2stream has improved by 3.9 points of accuracy (AP@0.5:0.95) compared to YOLOv8s-4ch, and achieved 73 FPS inference speed on Jetson.
环境温度变化下可见光和远红外实时多光谱行人检测
在当前的智能交通系统中,识别行人和避免碰撞是非常重要的。各种传感器用于行人检测,一些行人检测研究使用了可见光(RGB)摄像机和远红外(FIR)摄像机。FIR相机受环境温度(如夏季和冬季)的影响很大。然而,在评估行人检测精度时,很少有研究关注这一特性。因此,本文研究了温度变化对实时多光谱行人检测的影响。我们创建了一个具有三个子集的原始数据集,即Hot, Intermediate和Cold,并通过在训练和测试期间更改子集来评估温度影响。我们首先评估了YOLOv8s-4ch,它简单地将YOLOv8的输入层从3通道RGB扩展到4通道RGB- fir。为了进一步提高检测性能,我们建立了一个名为YOLOv8s-2stream的新模型。该模型具有RGB和FIR两个主干,并在每个分辨率下融合它们的特征图。我们发现,在特定温度子集上训练的模型降低了其他子集的测试精度。另一方面,当使用混合集训练时,覆盖所有温度集(热、热、热)。(冷),该模型在所有条件下都达到了最高的精度。此外,我们的YOLOv8s-2stream与YOLOv8s-4ch相比,精度提高了3.9分(AP@0.5:0.95),并且在杰森上实现了73 FPS的推理速度。
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CiteScore
5.40
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