一种用于道路和车辆目标检测模型的改进YOLO

Q3 Decision Sciences Journal of ICT Standardization Pub Date : 2023-09-22 DOI:10.13052/jicts2245-800X.1125
Qinghe Yu;Huaiqin Liu;Qu Wu
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引用次数: 0

摘要

yolo序列是目前较为流行的目标识别算法。然而,由于车辆目标识别的实时性高、目标奇偶性混合、目标模糊等特点,漏检和误检是常见的。它对yolo算法进行了改进,以提高该方法在识别车辆目标时的网络性能。为了正确描述改进影响,使用yolov4方法作为改进基线。首先,对DarkNet骨干网络的结构进行了修改,提出了一种更高效的骨干网络FBR-DarkNet,以增强特征提取的效果。为了更好地检测被遮挡的汽车,在Neck模块中添加了一个用于聚焦检测微小物体的薄特征层,以增加识别效果。为了提高模型的精度和收敛速度,引入了注意机制模块CBAM。轻量级网络用H-SWISH函数取代了MISH函数,在BDD100K数据集上,改进的算法比原始网络提高了4.76个百分点,汽车、卡车和公共汽车类别的mAP指标分别提高了8个点、8个点和7个点。与其他更新更好的算法相比,它仍然保持了相当不错的性能。它满足了实时检测的标准,并显著提高了检测精度。
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An Improved YOLO for Road and Vehicle Target Detection Model
The yolo series is the prevalent algorithm for target identification at now. Nevertheless, due to the high real-time, mixed target parity, and obscured target features of vehicle target recognition, missed detection and incorrect detection are common. It enhances the yolo algorithm in order to enhance the network performance of this method while identifying vehicle targets. To properly portray the improvement impact, the yolov4 method is used as the improvement baseline. First, the structure of the DarkNet backbone network is modified, and a more efficient backbone network, FBR-DarkNet, is presented to enhance the effect of feature extraction. In order to better detect obstructed cars, a thin feature layer for focused detection of tiny objects is added to the Neck module to increase the recognition impact. The attention mechanism module CBAM is included to increase the model's precision and speed of convergence. The lightweight network replaces the MISH function with the H-SWISH function, and the improved algorithm improves by 4.76 percentage points over the original network on the BDD100K data set, with the mAP metrics improving by 8 points, 8 points, and 7 points, respectively, for the car, truck, and bus categories. Compared to other newer and better algorithms, it nevertheless maintains a pretty decent performance. It satisfies the criteria for real-time detection and significantly improves the detection accuracy.
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来源期刊
Journal of ICT Standardization
Journal of ICT Standardization Computer Science-Information Systems
CiteScore
2.20
自引率
0.00%
发文量
18
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