Advance morphological filtering, correlation and convolution method for gesture recognition
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- @InProceedings{Gubrele:2017:CSNT,
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author = "Poorva Gubrele and Ritu Prasad and Praneet Saurabh and
Bhupendra Verma",
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booktitle = "2017 7th International Conference on Communication
Systems and Network Technologies (CSNT)",
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title = "Advance morphological filtering, correlation and
convolution method for gesture recognition",
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year = "2017",
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pages = "153--157",
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month = nov,
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/CSNT.2017.8418528",
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abstract = "Hand gesture recognition system is employed to provide
interface between computer and human using hand
gesture. This paper presents a technique for human
computer interface through common hand gesture that is
efficient to commemorate 25 aspersion gestures from the
American sign language hand alphabet. The prospect of
this paper is to develop up an algorithm for hand
gesture recognition with reasonable accuracy. This work
uses a domain independent learning methodology to
automatically stir low-level spatio-temporal
descriptors for high-level cross recognition by
Correlated variance programming. Feature extraction is
the most important orientation for gesture recognition
and is indeed important in terms of giving input to a
classifier. In this work Canny edge detector algorithm
is used to find edge of the segmented and morphological
filtered image which yields boundary of hand gesture in
the image then Correlated variance mean based
programming applied for recognition of gesture.
Experimental results very precisely indicate that the
developed method outperforms the existing state of the
art.",
-
notes = "Also known as \cite{8418528}",
- }
Genetic Programming entries for
Poorva Gubrele
Ritu Prasad
Praneet Saurabh
Bhupendra Verma
Citations