Deep Material-Aware Cross-Spectral Stereo Matching

2018 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR)(2018)

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摘要
Cross-spectral imaging provides strong benefits for recognition and detection tasks. Often, multiple cameras are used for cross-spectral imaging, thus requiring image alignment, or disparity estimation in a stereo setting. Increasingly, multi-camera cross-spectral systems are embedded in active RGBD devices (e.g. RGB-NIR cameras in Kinect and iPhone X). Hence, stereo matching also provides an opportunity to obtain depth without an active projector source. However, matching images from different spectral bands is challenging because of large appearance variations. We develop a novel deep learning framework to simultaneously transform images across spectral bands and estimate disparity. A material-aware loss function is incorporated within the disparity prediction network to handle regions with unreliable matching such as light sources, glass windshields and glossy surfaces. No depth supervision is required by our method. To evaluate our method, we used a vehicle-mounted RGB-NIR stereo system to collect 13.7 hours of video data across a range of areas in and around a city. Experiments show that our method achieves strong performance and reaches real-time speed.
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关键词
cross-spectral imaging,image alignment,disparity estimation,spectral bands,recognition tasks,detection tasks,deep material-aware cross-spectral stereo matching,vehicle-mounted RGB-NIR stereo system,material-aware loss function,estimate disparity,deep learning framework,active projector source,RGB-NIR cameras,active RGBD devices,multicamera cross-spectral systems,stereo setting,time 13.7 hour
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