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Pyramid (image processing)
Known as:
Gaussian Pyramid
, Laplacian pyramid
, Image pyramid
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Pyramid, or pyramid representation, is a type of multi-scale signal representation developed by the computer vision, image processing and signal…
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Related topics
Related topics
28 relations
Bilateral filter
BisQue
Convolution
Feature detection (computer vision)
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Broader (1)
Computer vision
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
Highly Cited
2018
Highly Cited
2018
Person Search by Multi-Scale Matching
Xu Lan
,
Xiatian Zhu
,
S. Gong
European Conference on Computer Vision
2018
Corpus ID: 49907834
We consider the problem of person search in unconstrained scene images. Existing methods usually focus on improving the person…
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Highly Cited
2017
Highly Cited
2017
Face Detection through Scale-Friendly Deep Convolutional Networks
Shuo Yang
,
Yuanjun Xiong
,
Chen Change Loy
,
Xiaoou Tang
arXiv.org
2017
Corpus ID: 31473210
In this paper, we share our experience in designing a convolutional network-based face detector that could handle faces of an…
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Highly Cited
2016
Highly Cited
2016
Infrared Colorization Using Deep Convolutional Neural Networks
Matthias Limmer
,
H. Lensch
International Conference on Machine Learning and…
2016
Corpus ID: 200631
This paper proposes a method for transferring the RGB color spectrum to near-infrared (NIR) images using deep multi-scale…
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Highly Cited
2015
Highly Cited
2015
Compact Bilinear Pooling
Yang Gao
,
Oscar Beijbom
,
Ning Zhang
,
Trevor Darrell
Computer Vision and Pattern Recognition
2015
Corpus ID: 1532984
Bilinear models has been shown to achieve impressive performance on a wide range of visual tasks, such as semantic segmentation…
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Highly Cited
2013
Highly Cited
2013
Co-Salient Object Detection From Multiple Images
Hongliang Li
,
Fanman Meng
,
K. Ngan
IEEE transactions on multimedia
2013
Corpus ID: 1597550
In this paper, we propose a novel method to discover co-salient objects from a group of images, which is modeled as a linear…
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Highly Cited
2011
Highly Cited
2011
Spatial pyramid co-occurrence for image classification
Yi Yang
,
S. Newsam
Vision
2011
Corpus ID: 231648
We describe a novel image representation termed spatial pyramid co-occurrence which characterizes both the photometric and…
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Highly Cited
2007
Highly Cited
2007
Spatial Scalability Within the H.264/AVC Scalable Video Coding Extension
C. A. Segall
,
G. Sullivan
IEEE transactions on circuits and systems for…
2007
Corpus ID: 7369223
A scalable extension to the H.264/AVC video coding standard has been developed within the joint video team (JVT), a joint…
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Highly Cited
2007
Highly Cited
2007
A new metric based on extended spatial frequency and its application to DWT based fusion algorithms
Yufeng Zheng
,
E. Essock
,
Bruce C. Hansen
,
A. Haun
Information Fusion
2007
Corpus ID: 13603559
Highly Cited
2004
Highly Cited
2004
Large-Scale Fabrication of Carbon Nanotube Probe Tips for Atomic Force Microscopy Critical Dimension Imaging Applications
Q. Ye
,
A. Cassell
,
Hongbing Liu
,
K. Chao
,
Jie Han
,
M. Meyyappan
2004
Corpus ID: 18699164
We report an innovative approach that combines nanopatterning and nanomaterials synthesis with traditional silicon micromachining…
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Highly Cited
2001
Highly Cited
2001
A Compilation Framework for Power and Energy Management on Mobile Computers
U. Kremer
,
Jamey Hicks
,
James M. Rehg
International Workshop on Languages and Compilers…
2001
Corpus ID: 1889041
Power and energy management is crucial for mobile devices that rely on battery power. In addition to voice recognition, image…
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