Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Context-Based Scene Understanding

View through CrossRef
Context plays an important role in performance of object detection. There are two popular considerations in building context models for computer vision applications; type of context (semantic, spatial, scale) and scope of the relations (pairwise, high-order). In this paper, a new unified framework is presented that combines multiple sources of context in high-order relations to encode semantical coherence and consistency of the scenes. This framework introduces a new descriptor called context relevance score to model context-based distribution of the response variables and apply it to two distributions. First model incorporates context descriptor along with annotation response into a supervised Latent Dirichlet Allocation (LDA) built on multi-variate Bernoulli distribution called Context-Based LDA (CBLDA). The second model is based on multi-variate Wallenius' non-central Hyper-geometric distribution and is called Wallenius LDA (WLDA). WLDA incorporates context knowledge as bias parameter. Scene context is modeled as a graph and effectively used in object detection framework to maximize semantical consistency of the scene. The graph can also be used in recognition of out-of-context objects. Annotation metadata of Sun397 dataset is used to construct the context model. Performance of the proposed approaches was evaluated on ImageNet dataset. Comparison between proposed approaches and state-of-art multi-class object annotation algorithm shows superiority of presented approach in labeling of scene content.
Title: Context-Based Scene Understanding
Description:
Context plays an important role in performance of object detection.
There are two popular considerations in building context models for computer vision applications; type of context (semantic, spatial, scale) and scope of the relations (pairwise, high-order).
In this paper, a new unified framework is presented that combines multiple sources of context in high-order relations to encode semantical coherence and consistency of the scenes.
This framework introduces a new descriptor called context relevance score to model context-based distribution of the response variables and apply it to two distributions.
First model incorporates context descriptor along with annotation response into a supervised Latent Dirichlet Allocation (LDA) built on multi-variate Bernoulli distribution called Context-Based LDA (CBLDA).
The second model is based on multi-variate Wallenius' non-central Hyper-geometric distribution and is called Wallenius LDA (WLDA).
WLDA incorporates context knowledge as bias parameter.
Scene context is modeled as a graph and effectively used in object detection framework to maximize semantical consistency of the scene.
The graph can also be used in recognition of out-of-context objects.
Annotation metadata of Sun397 dataset is used to construct the context model.
Performance of the proposed approaches was evaluated on ImageNet dataset.
Comparison between proposed approaches and state-of-art multi-class object annotation algorithm shows superiority of presented approach in labeling of scene content.

Related Results

Experts Participation in Crime Scene Search while Investigating Murders
Experts Participation in Crime Scene Search while Investigating Murders
The need to involve experts into crime scene search while investigating murders has been substantiated. The categories of experts who are most often involved by investigators into ...
Context-Aware Dynamic Integration for Scene Recognition
Context-Aware Dynamic Integration for Scene Recognition
The identification of scenes poses a notable challenge within the realm of image processing. Unlike object recognition, which typically involves relatively consistent forms, scene ...
Unravelling Representations in Scene-selective Brain Regions Using Scene Parsing Deep Neural Networks
Unravelling Representations in Scene-selective Brain Regions Using Scene Parsing Deep Neural Networks
Visual scene perception is mediated by a set of cortical regions that respond preferentially to images of scenes, including the occipital place area (OPA) and parahippocampal place...
Death, humor, and honesty: Storytelling strategies in caitlin doughty’s work
Death, humor, and honesty: Storytelling strategies in caitlin doughty’s work
Section 1. Staging Death: The Power of Scenes 1. Scene-by-scene construction In The Art of Fact, Lounsberry lists creative nonfiction features, and the scene is one of them. “Inste...
Context-Based Scene Understanding
Context-Based Scene Understanding
Context plays an important role in performance of object detection. There are two popular considerations in building context models for computer vision applications; type of contex...
Causal neural mechanisms of context-based object recognition
Causal neural mechanisms of context-based object recognition
Objects can be recognized based on their intrinsic features, including shape, color, and texture. In daily life, however, such features are often not clearly visible, for example w...
Causal neural mechanisms of context-based object recognition
Causal neural mechanisms of context-based object recognition
ABSTRACTObjects can be recognized based on their intrinsic features, including shape, color, and texture. In daily life, however, such features are often not clearly visible, for e...
Cash‐based approaches in humanitarian emergencies: a systematic review
Cash‐based approaches in humanitarian emergencies: a systematic review
This Campbell systematic review examines the effectiveness, efficiency and implementation of cash transfers in humanitarian settings. The review summarises evidence from five studi...

Back to Top