Flawless Detection of Herbal Plant Leaf by Machine Learning Classifier Through Two Stage Authentication Procedure
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Keywords

Herbal Plant Identification
Edge Detection
Machine Learning

How to Cite

Manoharan, J. Samuel. 2021. “Flawless Detection of Herbal Plant Leaf by Machine Learning Classifier Through Two Stage Authentication Procedure”. Journal of Artificial Intelligence and Capsule Networks 3 (2): 125-39. https://doi.org/10.36548/jaicn.2021.2.005.

Abstract

Herbal plants are crucial to human existence for medical reasons, and they can also provide free oxygen to the environment. Many herbal plants are rich in therapeutic goods and also it includes the active elements that will benefit future generations. Many valuable plant species are being extinguished and destroyed as a result of factors such as global warming, population growth, occupational secrecy, a lack of government support for research, and a lack of knowledge about therapeutic plants. Due to the lag of dimensional factors such as length and width, many existing algorithms fail to recognize herbal leaf in all seasons with the maximum accuracy. Henceforth, the proposed algorithm focuses on the incomplete problems in the datasets in order to improve the detection rate for herbal leaf identification. The inclusions of dimension factors in the datasets are performing good results in the image segmentation process. The obtained result has been validated with a machine learning classifier when combined with ex-or gate operation is called deep knowledge-based identification. This two-stage authentication (TSA) procedure is improving the recognition rate required for the detection of herbal leaf. This fusion of image segmentation with machine learning is providing good robustness for the proposed architecture. Besides, intelligent selection of image segmentation techniques to segment the leaf from the image is improving the detection accuracy. This procedure is addressing and answering the drawbacks associated with the detection of the herbal leaf by using many Machine Learning (ML) approaches. Also, it improves the rate of detection and minimizes the classification error. From the results, it is evident that the proposed method has obtained better accuracy and other performance measures.

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References

Dhaya, R. "Flawless Identification of Fusarium Oxysporum in Tomato Plant Leaves by Machine Learning Algorithm." Journal of Innovative Image Processing (JIIP) 2, no. 04 (2020): 194-201.

Dinesh Shitole, Faisal Tamboli, Krishna Motghare, Raj Kumar Raj,’’Ayurvedic Herb Detection using Image Processing’’, International Journal of Trend in Scientific Research and Development (IJTSRD) e- ISSN: 2456 - 6470Volume: 3 | Issue: 4 | May-Jun 2019.

Adam, Edriss Eisa Babikir. "Evaluation of Fingerprint Liveness Detection by Machine Learning Approach-A Systematic View." Journal of ISMAC 3, no. 01 (2021): 16-30.

R Janani and A Gopal, “Identification of selected medicinal herbs leaves Using Image Features and ANN”, 2013 International Conference on Advanced Electronic System (ICAES), pp 978-1-4799-1441-8.

Manoharan, Samuel. "Early diagnosis of Lung Cancer with Probability of Malignancy Calculation and Automatic Segmentation of Lung CT scan Images." Journal of Innovative Image Processing (JIIP) 2, no. 04 (2020): 175-186.

Wäldchen, J.; Rzanny, M.; Seeland, M.; Mäder, P. Automated plant species identification-trends and future directions. PLoS Comput. Biol. 2018, 14, e1005993.

Hamdan, Yasir Babiker. "Faultless Decision Making for False Information in Online: A Systematic Approach." Journal of Soft Computing Paradigm (JSCP) 2, no. 04 (2020): 226-235.

Turkoglu, M.; Hanbay, D. Recognition of plant leaves: An approach with hybrid features produced by dividing leaf images into two and four parts. Appl. Math. Comput. 2019, 352, 1–14.

Ranganathan, G. "A Study to Find Facts Behind Preprocessing on Deep Learning Algorithms." Journal of Innovative Image Processing (JIIP) 3, no. 01 (2021): 66-74.

Manojkumar P., Surya C. M., and Varun P. Gopi, “Identification of Ayurvedic Medicinal Plants by Image Processing of Leaf Samples”, 2017 Third International Conference on Research in Computational Intelligence and Communication Networks (ICRCICN), pp 978-1- 5386-1931-5.

Dutta, Sayantan, and Ayan Banerjee. "Highly Precise Modified Blue Whale Method Framed by Blending Bat and Local Search Algorithm for the Optimality of Image Fusion Algorithm." Journal of Soft Computing Paradigm (JSCP) 2, no. 04 (2020): 195-208.

Adams Begue, Venitha Kowlessur, Fawzi Mahomoodally, Upasana Singh and Sameerchand, “Automatic Recognition of Medicinal Plants using Machine Learning Techniques”, International Journal of Advanced Computer Science and Applications, Vol. 8, No. 4, 2017.

Sungheetha, Akey, and Rajesh Sharma. "3D Image Processing using Machine Learning based Input Processing for Man-Machine Interaction." Journal of Innovative Image Processing (JIIP) 3, no. 01 (2021): 1-6.

H. X. Kan, L. Jin, and F. L. Zhou,” Classification of Medicinal Plant Leaf Image Based on Multi-Feature Extraction”, Pattern Recognition and Image Analysis, Vol. 27, No. 3, 2017, pp. 581–587, 1054-6618. © Pleiades Publishing, Ltd.

Palani, U., Mrs D. Vasanthi, and Ms S. Rabiya Begam. "Enhancement of Medical Image Fusion Using Image Processing." Journal of Innovative Image Processing (JIIP) 2, no. 04 (2020): 165-174.

Riddhi H. Shaparia, Dr. Narendra M. Patel and Prof. Zankhana H. Shah,” Flower Classification using Texture and Color Features”, International Conference on Research and Innovations in Science, Engineering &Technology, Volume 2, 2017, Pages 113–118.

Marco Seeland, Michael Rzanny, Nedal Alaqraa, Jana Wa ¨ldchen, Patrick Ma ¨der, “Plant species classification using flower images—A comparative study of local feature representations”, PLOS ONE | DOI:10.1371/journal.pone.0170629 February 24, 2017.

Pradeep kumar Choudhary, Rahul Khandekar, Aakash Borkar, and Punit Chotaliya, “Image processing algorithm for fruit identification”, International Research Journal of Engineering and Technology (IRJET), Vol 4 Issue 3, e-ISSN: 2395 -0056, p-ISSN: 2395-0072, Mar -2017.

D Venkataraman and Mangayarkarasi N, “Computer Vision Based Feature Extraction of Leaves for Identification of Medicinal Values of Plants”, IEEE International Conference on Computational Intelligence and Computing Research, 978-1-5090-0612-0/16/$31.00 ©2016 IEEE.

Ruaa Adeeb Abdulmunem Al-falluji, “Color ,Shape and Texture based Fruit Recognition System”, International Journal of Advanced Research in Computer Engineering & Technology (IJARCET) Volume 5, Issue 7, ISSN: 2278 – 1323 ,July 2016.

Sana O M1, R.Jaya2,”Ayurvedic Herb Detection Using Image Processing”, International Journal of Computer Science and Information Technology Research, Vol. 3, Issue 4, pp: (134139), Month: October - December 2015.

Dhaya, R. "Analysis of Adaptive Image Retrieval by Transition Kalman Filter Approach based on Intensity Parameter." Journal of Innovative Image Processing (JIIP) 3, no. 01 (2021): 7-20.

Hang, J.; Zhang, D.; Chen, P.; Zhang, J.;Wang, B. Classification of Plant Leaf Diseases Based on Improved Convolutional Neural Network. Sensors 2019, 19, 4161

Chen, Joy Iong Zong, and Lu-Tsou Yeh. "Analysis of the Impact of Mechanical Deformation on Strawberries Harvested from the Farm." Journal: Journal of ISMAC September 2020, no. 3 (2020): 166-172

Lukic, M.; Tuba, E.; Tuba, M. Leaf recognition algorithm using support vector machine with Hu moments and local binary patterns. In Proceedings of the 2017 IEEE 15th International Symposium on Applied Machine Intelligence and Informatics, Herl0any, Slovakia, 26–28 January 2017; pp. 000485–000490.

Yasir Babiker Hamdan et al “Construction of Statistical SVM based Recognition Model for Handwritten Character Recognition” published in Journal of Information Technology and Digital World (2021) Vol. 03/ No. 02 Pages: 92-107.