DocumentCode :
3112824
Title :
Color and Texture Feature Extraction Using Apache Hadoop Framework
Author :
Sabarad, Akash K. ; Kankudti, Mohamed Humair ; Meena, S.M. ; Husain, Moula
Author_Institution :
Dept. of Comput. Sci., B.V.B Coll. of Eng. & Technol., Hubli, India
fYear :
2015
fDate :
26-27 Feb. 2015
Firstpage :
585
Lastpage :
588
Abstract :
Multimedia data is expanding exponentially. The rapid growth of technology combined with affordable storage and capabilities has lead to explosion in the availability and applications of multimedia. Most of the data is available in the form of images and videos. Today large amount of image data is produced through digital cameras, mobile phones and other sources. Processing of this large collection of images involve highly complex and repetitive operations on a large database leading to challenges of optimizing the query time and data storage capacity. Many image processing and computer vision algorithms are applicable to large-scale data tasks. It is often desirable to run the image processing algorithms on large data sets (e.g. larger than 1 TB) that are currently limited by the computational power of a single computer system. In order to handle such a huge data, we propose execution of time and space intensive computer vision algorithms on a distributed computing platform by using Apache Hadoop framework. Basically, Hadoop framework works based on divide and conquer strategy. The task of extracting color and texture features will be divided and assigned to multiple nodes of the Hadoop cluster. A significant speedup in computation time and efficient utilizations of memory can be achieved by exploiting the parallelism nature of Apache Hadoop framework. The Most important advantage of using Hadoop is, it is highly economical as whole framework can be implemented on existing commodity machines. Moreover, the system is highly fault tolerant and less vulnerable to node failures.
Keywords :
computer vision; data handling; divide and conquer methods; feature extraction; image colour analysis; image texture; parallel processing; Apache Hadoop framework; color feature extraction; data storage capacity; digital cameras; distributed computing platform; divide and conquer strategy; image collection processing; image data; large-scale data tasks; mobile phones; multimedia data; node failures; query time optimization; single computer system; space intensive computer vision algorithms; texture feature extraction; Big data; Electronic mail; Feature extraction; Image color analysis; Parallel processing; Random access memory; Color Histogram; HDFS; Hadoop; MapReduce; NameNode;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computing Communication Control and Automation (ICCUBEA), 2015 International Conference on
Conference_Location :
Pune
Type :
conf
DOI :
10.1109/ICCUBEA.2015.120
Filename :
7155915
Link To Document :
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