Channel-separation-based Network for Object Detection under Foggy Conditions

2023 IEEE 18th Conference on Industrial Electronics and Applications (ICIEA)(2023)

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摘要
Vision plays a key role in enhancing environmental awareness in several applications. However, under adverse weather conditions (particularly foggy conditions), it is difficult to locate objects from the captured low-quality images. Most existing methods attempt to restore high-quality images from the low-quality ones, which increases system complexity and results in the loss of the latent information of the images. In this study, a channel-separation-based detection network is proposed to preserve latent information. In particular, a fog filter is used to perform pruning during image processing to maintain the latent information of the images. By replacing the deep feature extraction layer with a plug-and-play block (MBConvBlock) and using a new CSPBottleNeck combined with CrossConv in the feature pyramid network, our model can overcome the disadvantages of convolutional neural network with fixed and global receptive fields and focus on more crucial object features. The model was trained jointly using an end-to-end method and hybrid data, thereby enhancing the generalization ability of the model network. The results indicate that our model achieves outstanding performance under both normal and real-world foggy conditions with an mAP of 74.40% and 42.10%, respectively.
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关键词
object detection,foggy conditions,channel separation
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