A Review on: Visual Recognition Through Object Bank

Authors

  • Sharma AK Amrit Kumar Sharma Department of Comp Sc & Engineering Sikkim Manipal Institute Of Technology Majitar, India

Keywords:

Object Bank, Image recognition, Image representation, SVM, Semantic information, Feature extraction, Maximum Entropy

Abstract

This report consists of a literature review of papers dealing with visual recognition using different techniques. Several papers that brought contribution to this field are summarized, analysed and compared. Different papers uses different moreover similar concepts for image/object recognition and their work brought average results in this field. By using the novel concept of Object Bank (OB) very good progress over image/object recognition has been done over recent years. Here we are stipulating the concept of Object Bank for high level visual recognition by using different Support Vector Machine (SVM) classifiers.

References

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Published

2015-03-31

How to Cite

[1]
A. K. Sharma, “A Review on: Visual Recognition Through Object Bank”, Int. J. Comp. Sci. Eng., vol. 3, no. 3, pp. 59–62, Mar. 2015.

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Section

Review Article