Abstract

Sky and ground are two essential semantic components in computer vision, robotics, and remote sensing. The sky and ground segmentation has become increasingly popular. This research proposes a sky and ground segmentation framework for the rover navigation visions by adopting weak supervision and transfer learning technologies. A new sky and ground segmentation neural network (network in U-shaped network (NI-U-Net)) and a conservative annotation method have been proposed. The pre-trained process achieves the best results on a popular open benchmark (the Skyfinder dataset) by evaluating seven metrics compared to the state-of-the-art. These seven metrics achieve 99.232%, 99.211%, 99.221%, 99.104%, 0.0077, 0.0427, and 98.223% on accuracy, precision, recall, dice score (F1), misclassification rate (MCR), root mean squared error (RMSE), and intersection over union (IoU), respectively. The conservative annotation method achieves superior performance with limited manual intervention. The NI-U-Net can operate with 40 frames per second (FPS) to maintain the real-time property. The proposed framework successfully fills the gap between the laboratory results (with rich idea data) and the practical application (in the wild). The achievement can provide essential semantic information (sky and ground) for the rover navigation vision.

Highlights

  • Sky and ground segmentation is a popular topic in computer vision that has a wide range of applications [1,2,3,4,5,6,7,8,9,10,11]

  • This research aims to fill the gap between the lavatory achievement and the practical application through the proposed framework using the conservative annotation method, weak supervision, and transfer learning

  • The results indicate that the conservative annotation method can achieve superior performance with limited manual intervention, and the annotation speed is about one to two minutes per image

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Summary

Introduction

Sky and ground segmentation is a popular topic in computer vision that has a wide range of applications [1,2,3,4,5,6,7,8,9,10,11]. Sky and ground are the two essential components in outdoor and remote scenes [11,12,13,14,15,16]. Sky and ground segmentation research is an active topic in bionics studies [17,18,19,20]. The visual environment of a planetary rover is complex [21,22]. Semantic segmentation helps planetary rovers understand the environment logically

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