Xi Wang, Xin Liu, Songming Zhu, Zhanwen Li, Lina Gao
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Before DAS data undergo object detection as\ntwo-dimensional images to preserve spatial information, we leveraged\ncomprehensive one-dimensional signal preprocessing to mitigate noise.\nFurthermore, we propose a novel prior loss that incorporates the shapes of\nvehicular traces to track a single vehicle with varying speeds. To evaluate our\nmodel, we conducted experiments with seismic data from the Stanford 2 DAS\nArray. The results showed that our model outperformed the baseline model\nEfficient Teacher and its supervised counterpart, YOLO (You Only Look Once), in\nboth accuracy and robustness. With only 35 labeled images, our model surpassed\nYOLO's mAP 0.5:0.95 criterion by 18% and showed a 7% increase over Efficient\nTeacher. We conducted comparative experiments with multiple update strategies\nfor self-updating and identified an optimal approach. 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引用次数: 0
摘要
最近出现的分布式声学传感(DAS)技术有助于有效捕捉交通诱发的地震数据。交通诱发的地震波是城市振动的一个突出因素,包含着推进城市探索和治理的重要信息。然而,在海量噪声数据中识别车辆运动是一项重大挑战。在这项研究中,我们引入了一个专为城市环境定制的实时半监督车辆监测框架。它只需要少量人工标签进行初始训练,并利用无标签数据改进模型。此外,该框架还能自主适应新收集到的未标记数据。在将 DAS 数据作为二维图像进行物体检测以保留空间信息之前,我们利用全面的一维信号预处理来减少噪声。此外,我们还提出了一种新颖的先验损失,它结合了车辆轨迹的形状来跟踪不同速度的单个车辆。为了评估我们的模型,我们使用斯坦福 2 DAS 阵列的地震数据进行了实验。结果表明,我们的模型在准确性和鲁棒性方面都优于基线模型 "高效教师"(Efficient Teacher)及其监督模型 "YOLO"(You Only Look Once)。在只有 35 张标注图像的情况下,我们的模型比 YOLO 的 mAP 0.5:0.95 标准高出 18%,比 Efficient Teacher 高出 7%。我们使用多种自我更新策略进行了对比实验,并确定了一种最佳方法。这种方法的性能超过了单次使用所有数据进行非过拟合训练的效果。
The recent emergence of Distributed Acoustic Sensing (DAS) technology has
facilitated the effective capture of traffic-induced seismic data. The
traffic-induced seismic wave is a prominent contributor to urban vibrations and
contain crucial information to advance urban exploration and governance.
However, identifying vehicular movements within massive noisy data poses a
significant challenge. In this study, we introduce a real-time semi-supervised
vehicle monitoring framework tailored to urban settings. It requires only a
small fraction of manual labels for initial training and exploits unlabeled
data for model improvement. Additionally, the framework can autonomously adapt
to newly collected unlabeled data. Before DAS data undergo object detection as
two-dimensional images to preserve spatial information, we leveraged
comprehensive one-dimensional signal preprocessing to mitigate noise.
Furthermore, we propose a novel prior loss that incorporates the shapes of
vehicular traces to track a single vehicle with varying speeds. To evaluate our
model, we conducted experiments with seismic data from the Stanford 2 DAS
Array. The results showed that our model outperformed the baseline model
Efficient Teacher and its supervised counterpart, YOLO (You Only Look Once), in
both accuracy and robustness. With only 35 labeled images, our model surpassed
YOLO's mAP 0.5:0.95 criterion by 18% and showed a 7% increase over Efficient
Teacher. We conducted comparative experiments with multiple update strategies
for self-updating and identified an optimal approach. This approach surpasses
the performance of non-overfitting training conducted with all data in a single
pass.