Generative prompt model for weakly supervised object localization
Weakly supervised object localization (WSOL) remains challenging when learning object
localization models from image category labels. Conventional methods that discriminatively …
localization models from image category labels. Conventional methods that discriminatively …
Mining high-quality pseudoinstance soft labels for weakly supervised object detection in remote sensing images
Weakly supervised object detection in remote sensing images (RSI) is still a challenge
because of the lack of instance-level labels, and many existing methods have two problems …
because of the lack of instance-level labels, and many existing methods have two problems …
Selecting high-quality proposals for weakly supervised object detection with bottom-up aggregated attention and phase-aware loss
Weakly supervised object detection (WSOD) has received widespread attention since it
requires only image-category annotations for detector training. Many advanced approaches …
requires only image-category annotations for detector training. Many advanced approaches …
[HTML][HTML] Semantic segmentation guided pseudo label mining and instance re-detection for weakly supervised object detection in remote sensing images
Weakly supervised object detection (WSOD) in remote sensing images (RSIs) has good
practical value because it only requires the image-level annotations. The existing methods …
practical value because it only requires the image-level annotations. The existing methods …
An unsupervised method for social network spammer detection based on user information interests
Abstract Online Social Networks (OSNs) are a popular platform for communication and
collaboration. Spammers are highly active in OSNs. Uncovering spammers has become one …
collaboration. Spammers are highly active in OSNs. Uncovering spammers has become one …
Exploring Multiple Instance Learning (MIL): A brief survey
Abstract Multiple Instance Learning (MIL) is a learning paradigm, where training instances
are arranged in sets, called bags, and only bag-level labels are available during training …
are arranged in sets, called bags, and only bag-level labels are available during training …
Enhancing hyperspectral image classification: Leveraging unsupervised information with guided group contrastive learning
Deep learning (DL) has demonstrated remarkable performance in the classification of
hyperspectral images (HSIs) by leveraging its powerful ability to automatically learn deep …
hyperspectral images (HSIs) by leveraging its powerful ability to automatically learn deep …
SELF-LLP: Self-supervised learning from label proportions with self-ensemble
In this paper, we tackle the problem called learning from label proportions (LLP), where the
training data is arranged into various bags, with only the proportions of different categories …
training data is arranged into various bags, with only the proportions of different categories …
One point is all you need for weakly supervised object detection
Object detection with weak annotations has attracted much attention recently. Weakly
supervised object detection (WSOD) methods which only use image-level labels to train a …
supervised object detection (WSOD) methods which only use image-level labels to train a …
Multiple instance learning from similarity-confidence bags
X Zhang, Y Xu, X Liu - Pattern Recognition, 2024 - Elsevier
Multiple instance learning (MIL) is a classic weakly supervised learning approach, in which
samples are grouped into bags that may contain varying numbers of instances. A bag is …
samples are grouped into bags that may contain varying numbers of instances. A bag is …