Real-time Fusion Network for RGB-D Semantic Segmentation Incorporating Unexpected Obstacle Detection for Road-driving Images

February 24, 2020 ยท Entered Twilight ยท ๐Ÿ› IEEE Robotics and Automation Letters

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Authors Lei Sun, Kailun Yang, Xinxin Hu, Weijian Hu, Kaiwei Wang arXiv ID 2002.10570 Category cs.CV: Computer Vision Cross-listed cs.RO, eess.IV Citations 156 Venue IEEE Robotics and Automation Letters Repository https://github.com/AHupuJR/RFNet โญ 84 Last Checked 1 month ago
Abstract
Semantic segmentation has made striking progress due to the success of deep convolutional neural networks. Considering the demands of autonomous driving, real-time semantic segmentation has become a research hotspot these years. However, few real-time RGB-D fusion semantic segmentation studies are carried out despite readily accessible depth information nowadays. In this paper, we propose a real-time fusion semantic segmentation network termed RFNet that effectively exploits complementary cross-modal information. Building on an efficient network architecture, RFNet is capable of running swiftly, which satisfies autonomous vehicles applications. Multi-dataset training is leveraged to incorporate unexpected small obstacle detection, enriching the recognizable classes required to face unforeseen hazards in the real world. A comprehensive set of experiments demonstrates the effectiveness of our framework. On Cityscapes, Our method outperforms previous state-of-the-art semantic segmenters, with excellent accuracy and 22Hz inference speed at the full 2048x1024 resolution, outperforming most existing RGB-D networks.
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