KPNDepth: Depth Estimation of Lane Images under Complex Rainy Environment
Recent advancements in deep neural networks have improved depth estimation in clear, daytime driving scenarios. However, existing methods struggle with rainy conditions due to rain streaks and fog, which distort depth estimation. This paper introduces a novel dual-layer convolutional kernel predicti...
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Zusammenfassung: | Recent advancements in deep neural networks have improved depth estimation in
clear, daytime driving scenarios. However, existing methods struggle with rainy
conditions due to rain streaks and fog, which distort depth estimation. This
paper introduces a novel dual-layer convolutional kernel prediction network for
lane depth estimation in rainy environments. It predicts two sets of kernels to
mitigate depth loss and rain streak artifacts. To address the scarcity of real
rainy lane data, an image synthesis algorithm, RCFLane, is presented, creating
a synthetic dataset called RainKITTI. Experiments show the framework's
effectiveness in complex rainy conditions. |
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DOI: | 10.48550/arxiv.2405.09964 |