Author : Arpit Trivedi 1
Date of Publication :19th October 2021
Abstract: Human Prakriti and Tridosha are vital for human health and fitness as per Ayurveda. Human prakriti can identified by many ways in Ayurveda. Physiological features of human body are one of the essential measure to diagnose prakriti constituents. With the help of image processing techniques of computer science, we can make the process of identification of human prakriti in automatic way. In this paper, we studied exhaustive literature survey based on three aspects: prakriti and tridosha, physiological features and contribution of machine learning and image processing. We also identified research gaps based on literature survey. We have also proposed a model based on image processing in order to classify human prakriti based on physiological features from images.
Reference :
-
- B. M. S. Kumari Vandana, "Human constitutional types of Ayurveda and its relation with hematological parameters in infants," National Journal of Physiology, Pharmacy and Pharmacology, vol. 8, no. 10, pp. 1384-1387, 2018.
- C Gunaseelan and V Ramesh. Article: A Study on Application of Data Mining in Ayurinformatics. International Journal of Computer Applications 137(4):32-36, March 2016. Published by Foundation of Computer Science (FCS), NY, USA
- C. Hessler and M. Abouelenien, "Using Thermal Images and Physiological Features to Model Human Behavior: A Survey," 2018 IEEE Conference on Multimedia Information Processing and Retrieval (MIPR), Miami, FL, 2018, pp. 278-281, doi: 10.1109/MIPR.2018.00064.
- Gayathri Holla, Suresh Y "Prakriti - In preventing lifestyle disease," INTERNATIONAL AYURVEDIC MEDICAL JOURNAL, vol. 6, no. 5, pp. 1088-1092, 2018.
- H. Amin, "How Data Mining is useful in Ayurveda," Journal of Ayurvedic and Herbal Medicine, vol. 2, no. 3, pp. 61-62, July-2016.
- H. Waghulade, "A Review on Role of Prakruti in Vocational Guidance," International Journal of Advanced Ayurveda, Yoga, Unani, Siddha and Homeopathy, vol. 2, no. 1, pp. 46-53, 2013.
- Jayalath, Dhanushi & Nadeeshan, Dhanuka & Amarawansha, Geeshani & Jayasuriya, Hasini & Nawinna, Dasuni. (2019). Identification of Medicinal Plants by Visual Characteristics of Leaves and Flowers. 10.1109/ICIIS47346.2019.9063275.
- Joshi RR. A biostatistical approach to ayurveda: quantifying the tridosha. J Altern Complement Med. 2004 Oct;10(5):879-89. doi: 10.1089/acm.2004.10.879. PMID: 15650478
- Kallurkar, P.S., Patil, K., Sharma, G., Sharma, S., & Sharma, N. (2015). Analysis of Tridosha in various physiological conditions. 2015 IEEE International Conference on Electronics, Computing and Communication Technologies (CONECCT), 1-5.
- Nida M. Zaitouna, Musbah J. Aqelb,"Survey on Image Segmentation Techniques," Elsevier B.V., pp. 797- 806, 2015.
- Obulesu, O., Mahendra, M., & ThrilokReddy, M. (2018). Machine Learning Techniques and Tools: A Survey. 2018 International Conference on Inventive Research in Computing Applications (ICIRCA), 605- 611.
- Pradeep Tiwari et.al.Recapitulation of Ayurveda constitution types by machine learning of phenotypic traits," PLOS ONE, pp. 1-17, 2017
- Prasher, B., Negi, S., Aggarwal, S. et al. Whole genome expression and biochemical correlates of extreme constitutional types defined in Ayurveda. J Transl Med 6, 48 (2008). https://doi.org/10.1186/1479-5876-6-48
- Ramakrishna, Kishore Kumar & R, Ramakrishna & R, Kishore & V, Vaidya & R, Nagaratna & Nagendra, Hr. (2014). Ramakrishna B R, Kishore K R, Vaidya V, Nagaratna R, Nagendra H R. Development of Sushrutha Prakriti Inventory, an Ayurveda based personality assessment tool. J. of Ayurveda and Hol. Med. (JAHM).2014; 2(8):6-14. Journal of Ayurveda and Holistic Medicine (JAHM). 2. 6-14.
- S. G. Piyush Kumar Tripathi, "Variations in Physiological Parameters in Concordance with Constitutional Type of Ayurveda," International Journal of Ayurveda & Medical Sciences, vol. 1, no. 4, pp. 92-96, 2016
- S. Rastogi, "Development and validation of a Prototype Prakriti Analysis Tool (PPAT): Inferences from a pilot study," AYU, vol. 33, no. 2, pp. 209-218, 2012.
- S. V. Manoj Kumar Singh, "Tridosha in Context of Living Organisms," INternational Journal of Ayurveda and Pharamaceutical Chemistry, vol. 1, no. 11, pp. 207-215, 2019
- Sharoni Narang, Saumya P S K, Omkar Batwal, Mrunal Khandagale, "Ayurveda based Disease Diagnosis using Machine Learning" International Research Journal of Engineering and Technology, vol. 5, no. 3, pp. 3704-3707, 2018
- V. Madaan and A. Goyal, "Predicting AyurvedaBased Constituent Balancing in Human Body Using Machine Learning Methods," in IEEE Access, vol. 8, pp. 65060-65070, 2020, doi: 10.1109/ACCESS.2020.2985717.
- Venkata Giri Kumar, P., Deshpande, S., Joshi, A., More, P., & Nagendra, H. R. (2017). Significance of arterial stiffness in Tridosha analysis: A pilot study. Journal of Ayurveda and integrative medicine, 8(4), 252–256. https://doi.org/10.1016/j.jaim.2017.02.012.
- W. Khan, "Image Segmentation Techniques: A Survey," Journal of Image and Graphics, vol. 4, no. 4, pp. 166-170, 2013.