A review of semantic segmentation using deep neural networks
During the long history of computer vision, one of the grand challenges has been semantic
segmentation which is the ability to segment an unknown image into different parts and …
segmentation which is the ability to segment an unknown image into different parts and …
A survey of semi-and weakly supervised semantic segmentation of images
M Zhang, Y Zhou, J Zhao, Y Man, B Liu… - Artificial Intelligence …, 2020 - Springer
Image semantic segmentation is one of the most important tasks in the field of computer
vision, and it has made great progress in many applications. Many fully supervised deep …
vision, and it has made great progress in many applications. Many fully supervised deep …
Causal intervention for weakly-supervised semantic segmentation
We present a causal inference framework to improve Weakly-Supervised Semantic
Segmentation (WSSS). Specifically, we aim to generate better pixel-level pseudo-masks by …
Segmentation (WSSS). Specifically, we aim to generate better pixel-level pseudo-masks by …
Regional semantic contrast and aggregation for weakly supervised semantic segmentation
Learning semantic segmentation from weakly-labeled (eg, image tags only) data is
challenging since it is hard to infer dense object regions from sparse semantic tags. Despite …
challenging since it is hard to infer dense object regions from sparse semantic tags. Despite …
Object region mining with adversarial erasing: A simple classification to semantic segmentation approach
We investigate a principle way to progressively mine discriminative object regions using
classification networks to address the weakly-supervised semantic segmentation problems …
classification networks to address the weakly-supervised semantic segmentation problems …
Revisiting dilated convolution: A simple approach for weakly-and semi-supervised semantic segmentation
Despite remarkable progress, weakly supervised segmentation methods are still inferior to
their fully supervised counterparts. We obverse that the performance gap mainly comes from …
their fully supervised counterparts. We obverse that the performance gap mainly comes from …
Weakly-supervised semantic segmentation network with deep seeded region growing
This paper studies the problem of learning image semantic segmentation networks only
using image-level labels as supervision, which is important since it can significantly reduce …
using image-level labels as supervision, which is important since it can significantly reduce …
Tell me where to look: Guided attention inference network
Weakly supervised learning with only coarse labels can obtain visual explanations of deep
neural network such as attention maps by back-propagating gradients. These attention …
neural network such as attention maps by back-propagating gradients. These attention …
Mixed supervision for surface-defect detection: From weakly to fully supervised learning
Deep-learning methods have recently started being employed for addressing surface-defect
detection problems in industrial quality control. However, with a large amount of data …
detection problems in industrial quality control. However, with a large amount of data …
Survey on semantic segmentation using deep learning techniques
Semantic segmentation is a challenging task in computer vision systems. A lot of methods
have been developed to tackle this problem ranging from autonomous vehicles, human …
have been developed to tackle this problem ranging from autonomous vehicles, human …