Publication | Open Access
Lightweight Vehicle Detection Based on Improved YOLOv5s
16
Citations
43
References
2024
Year
Automotive TrackingConvolutional Neural NetworkEngineeringFeature DetectionImage ClassificationImage AnalysisData ScienceLightweight Module IpaPattern RecognitionVehicle Detection AlgorithmVideo TransformerMachine VisionFeature LearningObject DetectionComputer EngineeringLightweight Vehicle DetectionComputer ScienceDeep LearningComputer VisionYolov5 Algorithm
A vehicle detection algorithm is an indispensable component of intelligent traffic management and control systems, influencing the efficiency and functionality of the system. In this paper, we propose a lightweight improvement method for the YOLOv5 algorithm based on integrated perceptual attention, with few parameters and high detection accuracy. First, we propose a lightweight module IPA with a Transformer encoder based on integrated perceptual attention, which leads to a reduction in the number of parameters while capturing global dependencies for richer contextual information. Second, we propose a lightweight and efficient multiscale spatial channel reconstruction (MSCCR) module that does not increase parameter and computational complexity and facilitates representative feature learning. Finally, we incorporate the IPA module and the MSCCR module into the YOLOv5s backbone network to reduce model parameters and improve accuracy. The test results show that, compared with the original model, the model parameters decrease by about 9%, the average accuracy (mAP@50) increases by 3.1%, and the FLOPS does not increase.
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