Literature DB >> 19482579

Learning color names for real-world applications.

Joost van de Weijer1, Cordelia Schmid, Jakob Verbeek, Diane Larlus.   

Abstract

Color names are required in real-world applications such as image retrieval and image annotation. Traditionally, they are learned from a collection of labeled color chips. These color chips are labeled with color names within a well-defined experimental setup by human test subjects. However, naming colors in real-world images differs significantly from this experimental setting. In this paper, we investigate how color names learned from color chips compare to color names learned from real-world images. To avoid hand labeling real-world images with color names, we use Google Image to collect a data set. Due to the limitations of Google Image, this data set contains a substantial quantity of wrongly labeled data. We propose several variants of the PLSA model to learn color names from this noisy data. Experimental results show that color names learned from real-world images significantly outperform color names learned from labeled color chips for both image retrieval and image annotation.

Entities:  

Year:  2009        PMID: 19482579     DOI: 10.1109/TIP.2009.2019809

Source DB:  PubMed          Journal:  IEEE Trans Image Process        ISSN: 1057-7149            Impact factor:   10.856


  14 in total

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5.  Robust Scale Adaptive Tracking by Combining Correlation Filters with Sequential Monte Carlo.

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6.  Online Model Updating and Dynamic Learning Rate-Based Robust Object Tracking.

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7.  Automatic Individual Pig Detection and Tracking in Pig Farms.

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8.  Robust Visual Tracking Using Structural Patch Response Map Fusion Based on Complementary Correlation Filter and Color Histogram.

Authors:  Zhaohui Hao; Guixi Liu; Jiayu Gao; Haoyang Zhang
Journal:  Sensors (Basel)       Date:  2019-09-26       Impact factor: 3.576

9.  Real-Time Visual Tracking through Fusion Features.

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Journal:  Sensors (Basel)       Date:  2016-06-23       Impact factor: 3.576

10.  Global Motion-Aware Robust Visual Object Tracking for Electro Optical Targeting Systems.

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Journal:  Sensors (Basel)       Date:  2020-01-20       Impact factor: 3.576

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