Motion representation using composite energy features

R Dosil, XR Fdez-Vidal, XM Pardo - Pattern recognition, 2008 - Elsevier
Pattern recognition, 2008Elsevier
This work tackles the segmentation of apparent-motion from a bottom-up perspective. When
no information is available to build prior high-level models, the only alternative are bottom-
up techniques. Hence, the whole segmentation process relies on the suitability of the low-
level features selected to describe motion. A wide variety of low-level spatio-temporal
features have been proposed so far. However, all of them suffer from diverse drawbacks.
Here, we propose the use of composite energy features in bottom-up motion segmentation …
This work tackles the segmentation of apparent-motion from a bottom-up perspective. When no information is available to build prior high-level models, the only alternative are bottom-up techniques. Hence, the whole segmentation process relies on the suitability of the low-level features selected to describe motion. A wide variety of low-level spatio-temporal features have been proposed so far. However, all of them suffer from diverse drawbacks. Here, we propose the use of composite energy features in bottom-up motion segmentation to solve several of these problems. Composite energy features are clusters of energy filters—pairs of band-pass filters in quadrature—each one sensitive to a different set of scale, orientation, direction of motion and speed. They are grouped in order to reconstruct independent motion patterns in a video sequence. A composite energy feature, this is, the response of one of these clusters of filters, can be built as a combination of the responses of the individual filters. Therefore, it inherits the desirable properties of energy filters but providing a more complete representation of motion patterns. In this paper, we will present our approach for integration of composite features based on the concept of Phase Congruence. We will show some results that illustrate the capabilities of this low-level motion representation and its usefulness in bottom-up motion segmentation and tracking.
Elsevier
以上显示的是最相近的搜索结果。 查看全部搜索结果

Google学术搜索按钮

example.edu/paper.pdf
搜索
获取 PDF 文件
引用
References