Video-based computer vision tasks can benefit from estimation of the salient regions and interactions between those regions. Traditionally, this has been done by identifying the object regions in the images by utilizing pre-trained models to perform object detection, object segmentation and/or object pose estimation. Although using pre-trained models is a viable approach, it has several limitations in the need for an exhaustive annotation of object categories, a possible domain gap between datasets, and a bias that is typically present in pre-trained models. In this work, we propose to utilize the common rationale that a sequence of video frames capture a set of common objects and interactions between them, thus a notion of co-segmentation ...
Video object segmentation is the task of estimating foreground object segments from the background t...
This paper proposes a deep learning model to efficiently detect salient regions in videos. It addres...
A number of recent systems for unsupervised featurebased learning of object models take advantage of...
Tremendous interest in deep learning has emerged in the computer vision research community. The esta...
There has been historic progress in the field of image understanding over the past few years. Deep l...
Automatic foreground segmentation and localization in images or videos are very important and basic ...
Video surveillance outputs different portrait information of scenes such as crime investigation, sec...
This paper presents a novel approach for segmenting moving objects in unconstrained environments usi...
The advent of deep learning has brought about great progress on many funda- mental computer vision t...
This Letter presents an attention‐modulating network for video object segmentation that can well ada...
Object detection and segmentation are important computer vision problems that have applications in s...
Semi-supervised video object segmentation is a fundamental yet Challenging task in computer vision. ...
Knowing where to look in an image can significantly improve performance in computer vision tasks by ...
The advance of digital technologies has endowed people with easier access to massive collections of ...
We introduce a simple yet effective network that embeds a novel Discriminative Feature Pooling (DFP)...
Video object segmentation is the task of estimating foreground object segments from the background t...
This paper proposes a deep learning model to efficiently detect salient regions in videos. It addres...
A number of recent systems for unsupervised featurebased learning of object models take advantage of...
Tremendous interest in deep learning has emerged in the computer vision research community. The esta...
There has been historic progress in the field of image understanding over the past few years. Deep l...
Automatic foreground segmentation and localization in images or videos are very important and basic ...
Video surveillance outputs different portrait information of scenes such as crime investigation, sec...
This paper presents a novel approach for segmenting moving objects in unconstrained environments usi...
The advent of deep learning has brought about great progress on many funda- mental computer vision t...
This Letter presents an attention‐modulating network for video object segmentation that can well ada...
Object detection and segmentation are important computer vision problems that have applications in s...
Semi-supervised video object segmentation is a fundamental yet Challenging task in computer vision. ...
Knowing where to look in an image can significantly improve performance in computer vision tasks by ...
The advance of digital technologies has endowed people with easier access to massive collections of ...
We introduce a simple yet effective network that embeds a novel Discriminative Feature Pooling (DFP)...
Video object segmentation is the task of estimating foreground object segments from the background t...
This paper proposes a deep learning model to efficiently detect salient regions in videos. It addres...
A number of recent systems for unsupervised featurebased learning of object models take advantage of...