Open Access Open Access  Restricted Access Subscription or Fee Access

Performance Evaluation of Pigeon Bird Classification Techniques using Template Matching

Monika Monika, Himanshi Singh

Abstract


So as to update the pigeon feathered creature grouping, perceive flying creatures and assent their conduct is an absolute necessity prerequisite. This examination paper is showing a strategy towards improvement of pigeon fledgling acknowledgment approaches. Flying creature’s dataset is made through 2D pictures by creating highlight vector of feathered creatures utilizing different picture preparing procedures so as to separate the winged animal bends from nature. According to the examinations head is a most particular piece of fowls, various highlights are separated utilizing format coordinating and make it ready to perform characterization of pigeon winged animal between various sorts of feathered creatures. Flying creatures basically have three sorts of practices: rummaging conduct, carefulness conduct and flight conduct. Flying creatures may search for nourishment and get away from the predators by the social cooperation’s to get a high possibility of survival. By demonstrating these social practices, social collaborations and the related fowl’s knowledge, four hunt methodologies related with five disentangled principles are detailed in a calculation. Recreations and examinations dependent on eighteen benchmark issues exhibit the adequacy, predominance and steadiness of algorithm. A few propositions for future research are additionally talked about.


Keywords


Performance Evaluation, Pigeon Bird, Classification, Template Matching, Bird Recognition.

Full Text:

PDF

References


U.D. Nadirnpalli, R.R. Price, S.G. Hall and P. Bomma, “A Comparison of Image Processing Techniques for Bird Recognition” Biotechnology Progress, vol.22, no.1 pp.9-13.2006

R. Bardeli, D.wolff, F. Kurth, M. Koch, K. –H. Tauchert, and K. -H Frommolt, “Detecting bird songs in a comlex acoustic environment and application to bioacoustic monitoring” Pattern Recognition Letters, vol.31, no.12, pp.1524-1534,2010

T.S. Brandes, “Automated sound recording and analysis techniques for bird surveys and conservation” Bird Conservation International, vol.18, pp.163-173, 2008.

C. Kwan, G. Mei, X. Zhao,Z. Ren R. Xu, V. Stanford, C. Rochet, J. Aube and K. Ho, “Bird classification algorithms: Theory and experimental results” in Proc. IEEE International Conference on Acoustic, Speech, and Signal Processing Montreal, Canada, 2004, pp.289-292.

E. Vilches, I. A. Escolbar, E. E. Vallejo and C. E. Taylor “Data mining applied to acoustic bird species recognition” in IEEE Int. Conf. on Patt. Recog, Hong Kong, China, 2006, pp.400-403.

S. Fagerlund, “Bird species recognition using support vector machines” EUSASIP J. Adv. Signal Process, vol.2007, pp.1-8, 2007.

P. Welinder, S. Branson, T. Mita, C. Wah, F. Schroff, S. Belongie amd P. Perona “Caltech-UCSD Birds 200” California Institute of Technology, Tech. Rep. CNS-TR-2010-001, 2010.

C. Rother, V. Kolmogorov, and A. Blake “GrabOut Interactive foreground extraction using iterated graph cuts”, “ACM Transactions on Graphics” vol.23, no.3, pp.309-314, August 2004.

Andŕeia Marini, Jacques Facon and Alessando L. Koerich “Bird Species Classification Based on Color Features” published in 2013 IEEE International Conference on Systems, Man and Cybemetics.

Yuee Liu, Jinglan Zhang, Dian Tjondronegoro and Shlomo Geva “A Shape Ontology Framework for Birds Classification”.

Forrest Briggs, Raviv Raich and Xiaoli Z Fern “Audio Classification of Bird Species: a Statisticals Manifold Approach”.

Mohammad Moaviyah Moghal, Vidya S. Pradhan, A.R. Khan and Mazhar Farooqui “Bird Calls Frequency Distribution Analysis to Correlate With Complexity of Syrinx”.

Gonzalez, Rafael C., and Paul Wintz. "Digital image processing (Book)." Reading, Mass., Addison-Wesley Publishing Co., Inc. (Applied Mathematics and Computation 13 (1977): 451.

MATLAB HSV conversion (2018), https://in.mathworks.com/help/matlab/ref/rgb2hsv.html.

MATLAB template matching, (2018), https://in.mathworks.com/matlabcentral/fileexchange/20061-template-matching.

Sarvaiya, Jignesh N., Suprava Patnaik, and Salman Bombaywala. "Image registration by template matching using normalized cross-correlation." 2009 International Conference on Advances in Computing, Control, and Telecommunication Technologies. IEEE, 2009.


Refbacks

  • There are currently no refbacks.