论文标题

在低级照明条件下使用多层gan的热红外图像的车辆检测

Thermal infrared image based vehicle detection in low-level illumination conditions using multi-level GANs

论文作者

Bhargava, Shivom, Prajapati, Sanjita, Chakraborty, Pranamesh

论文摘要

在良好的截至条件下,车辆检测准确性相当准确,但在弱光条件下容易受到检测准确性差。弱光和眩光在车辆大灯或尾灯中的综合效果导致车辆检测更有可能通过最新的对象检测模型。但是,热红外图像对照明的变化是可靠的,并且基于热辐射。最近,生成的对抗网络(GAN)已在图像域传输任务中广泛使用。最先进的GAN型号试图通过将红外图像转换为白天的RGB图像来提高夜间车辆检测准确性。但是,由于白天红外图像看起来与夜间红外图像相比,在夜间条件下,这些模型在夜间条件下表现不佳。因此,这项研究试图通过提出三种不同的方法来缓解这一缺点,该方法基于两个不同级别的GAN模型的组合,试图减少白天和夜间红外图像之间的特征分布差距。通过使用最新的对象检测模型测试模型,可以完成定量分析以比较提出的模型与最新模型的性能。定量分析和定性分析都表明,所提出的模型在夜间条件下的最新车辆检测模型优于最先进的GAN模型,显示了所提出的模型的功效。

Vehicle detection accuracy is fairly accurate in good-illumination conditions but susceptible to poor detection accuracy under low-light conditions. The combined effect of low-light and glare from vehicle headlight or tail-light results in misses in vehicle detection more likely by state-of-the-art object detection models. However, thermal infrared images are robust to illumination changes and are based on thermal radiation. Recently, Generative Adversarial Networks (GANs) have been extensively used in image domain transfer tasks. State-of-the-art GAN models have attempted to improve vehicle detection accuracy in night-time by converting infrared images to day-time RGB images. However, these models have been found to under-perform during night-time conditions compared to day-time conditions, as day-time infrared images looks different than night-time infrared images. Therefore, this study attempts to alleviate this shortcoming by proposing three different approaches based on combination of GAN models at two different levels that try to reduce the feature distribution gap between day-time and night-time infrared images. Quantitative analysis to compare the performance of the proposed models with the state-of-the-art models has been done by testing the models using state-of-the-art object detection models. Both the quantitative and qualitative analyses have shown that the proposed models outperform the state-of-the-art GAN models for vehicle detection in night-time conditions, showing the efficacy of the proposed models.

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