资源论文Learning Graphs to Model Visual Ob jects across Different Depictive Styles

Learning Graphs to Model Visual Ob jects across Different Depictive Styles

2020-04-06 | |  62 |   38 |   0

Abstract

Visual ob ject classification and detection are ma jor problems in contemporary computer vision. State-of-art algorithms allow thou- sands of visual ob jects to be learned and recognized, under a wide range of variations including lighting changes, occlusion, point of view and different ob ject instances. Only a small fraction of the literature ad- dresses the problem of variation in depictive styles (photographs, draw- ings, paintings etc.). This is a challenging gap but the ability to process images of all depictive styles and not just photographs has potential value across many applications. In this paper we model visual classes using a graph with multiple labels on each node; weights on arcs and nodes indicate relative importance (salience) to the ob ject description. Visual class models can be learned from examples from a database that contains photographs, drawings, paintings etc. Experiments show that our representation is able to improve upon Deformable Part Models for detection and Bag of Words models for classification.

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