一种用于识别交通信号灯状态的深度学习方法

Lan Yang;Zeyu He;Xiangmo Zhao;Shan Fang;Jiaqi Yuan;Yixu He;Shijie Li;Songyan Liu
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引用次数: 0

摘要

实时、准确的交通灯状态识别可为自动驾驶汽车决策和控制系统提供可靠的数据支持。针对交通信号灯在视觉传感器感知域中所占比例较小、识别场景复杂等潜在问题,我们提出了一种端到端的交通信号灯状态识别方法--ResNeSt50-CBAM-DINO(RC-DINO)。首先,我们对清华-腾讯交通灯(TTTL)进行了数据清洗,并将其与上海交通大学交通灯数据集(S2TLD)融合,形成了中国城市交通灯数据集(CUTLD)。其次,我们将残差网络与分离注意模块-50(ResNeSt50)和卷积块注意模块(CBAM)相结合,提取出更重要的交通灯特征。最后,使用 CUTLD 对提出的 RC-DINO 算法和主流识别算法进行了训练和分析。实验结果表明,与最初的 DINO 相比,RC-DINO 在平均精度(AP)、交集大于联合(IOU)= 0.5 时的平均精度(AP50)、小对象的平均精度(APs)、平均召回率(AR)和平衡 F 分数(F1-Score)方面分别提高了 3.1%、1.6%、3.4%、0.9% 和 0.9%,并具有一定的识别部分覆盖交通灯状态的能力。上述结果表明,所提出的 RC-DINO 提高了识别性能和鲁棒性,使其更适用于交通灯状态识别任务。
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A Deep Learning Method for Traffic Light Status Recognition
Real-time and accurate traffic light status recognition can provide reliable data support for autonomous vehicle decision-making and control systems. To address potential problems such as the minor component of traffic lights in the perceptual domain of visual sensors and the complexity of recognition scenarios, we propose an end-to-end traffic light status recognition method, ResNeSt50-CBAM-DINO (RC-DINO). First, we performed data cleaning on the Tsinghua-Tencent traffic lights (TTTL) and fused it with the Shanghai Jiao Tong University's traffic light dataset (S2TLD) to form a Chinese urban traffic light dataset (CUTLD). Second, we combined residual network with split-attention module-50 (ResNeSt50) and the convolutional block attention module (CBAM) to extract more significant traffic light features. Finally, the proposed RC-DINO and mainstream recognition algorithms were trained and analyzed using CUTLD. The experimental results show that, compared to the original DINO, RC-DINO improved the average precision (AP), AP at intersection over union (IOU) = 0.5 (AP 50 ), AP for small objects (APs), average recall (AR), and balanced F score (F1-Score) by 3.1 %, 1.6%, 3.4%, 0.9%, and 0.9%, respectively, and had a certain capability to recognize the partially covered traffic light status. The above results indicate that the proposed RC-DINO improved recognition performance and robustness, making it more suitable for traffic light status recognition tasks.
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