In this paper, we address panoramic semantic segmentation which is under-explored due to two critical challenges: (1) image distortions and object deformations on panoramas; (2) lack of semantic annotations in the 360-degree imagery. To tackle these problems, first, we propose the upgraded Transformer for Panoramic Semantic Segmentation, i.e., Trans4PASS+, equipped with Deformable Patch Embedding (DPE) and Deformable MLP (DMLPv2) modules for handling object deformations and image distortions whenever (before or after adaptation) and wherever (shallow or deep levels). Second, we enhance the Mutual Prototypical Adaptation (MPA) strategy via pseudo-label rectification for unsupervised domain adaptive panoramic segmentation. Third, aside from P...
Recently, methods have been proposed for 3D open-vocabulary semantic segmentation. Such methods are ...
The appearance of scenes may change for many reasons, including the viewpoint, the time of day, the ...
Continual learning for segmentation has recently seen increasing interest. However, all previous wor...
In this paper, we address panoramic semantic segmentation which is under-explored due to two critica...
2019 IEEE Intelligent Vehicles Symposium (IV), Paris, France, 9-12 June 2019Pixel-wise semantic segm...
Pixel-wise semantic segmentation is capable of unifying most of driving scene perception tasks, and ...
Existing panoramic depth estimation methods based on convolutional neural networks (CNNs) focus on r...
Panoramic videos contain richer spatial information and have attracted tremendous amounts of attenti...
In this work, we introduce panoramic panoptic segmentation, as the most holistic scene understanding...
360$^\circ$ video saliency detection is one of the challenging benchmarks for 360$^\circ$ video unde...
Optical flow estimation is a basic task in self-driving and robotics systems, which enables to tempo...
Panorama synthesis aims to generate a visual scene with all 360-degree views and enables an immersiv...
Vision transformers (ViTs) encoding an image as a sequence of patches bring new paradigms for semant...
Semantic segmentation is paramount for autonomous vehicles to have a deeper understanding of the sur...
Large-scale training data with high-quality annotations is critical for training semantic and instan...
Recently, methods have been proposed for 3D open-vocabulary semantic segmentation. Such methods are ...
The appearance of scenes may change for many reasons, including the viewpoint, the time of day, the ...
Continual learning for segmentation has recently seen increasing interest. However, all previous wor...
In this paper, we address panoramic semantic segmentation which is under-explored due to two critica...
2019 IEEE Intelligent Vehicles Symposium (IV), Paris, France, 9-12 June 2019Pixel-wise semantic segm...
Pixel-wise semantic segmentation is capable of unifying most of driving scene perception tasks, and ...
Existing panoramic depth estimation methods based on convolutional neural networks (CNNs) focus on r...
Panoramic videos contain richer spatial information and have attracted tremendous amounts of attenti...
In this work, we introduce panoramic panoptic segmentation, as the most holistic scene understanding...
360$^\circ$ video saliency detection is one of the challenging benchmarks for 360$^\circ$ video unde...
Optical flow estimation is a basic task in self-driving and robotics systems, which enables to tempo...
Panorama synthesis aims to generate a visual scene with all 360-degree views and enables an immersiv...
Vision transformers (ViTs) encoding an image as a sequence of patches bring new paradigms for semant...
Semantic segmentation is paramount for autonomous vehicles to have a deeper understanding of the sur...
Large-scale training data with high-quality annotations is critical for training semantic and instan...
Recently, methods have been proposed for 3D open-vocabulary semantic segmentation. Such methods are ...
The appearance of scenes may change for many reasons, including the viewpoint, the time of day, the ...
Continual learning for segmentation has recently seen increasing interest. However, all previous wor...