Open Access Journal

ISSN : 2394-2320 (Online)

International Journal of Engineering Research in Computer Science and Engineering (IJERCSE)

Monthly Journal for Computer Science and Engineering

Open Access Journal

International Journal of Engineering Research in Computer Science and Engineering (IJERCSE)

Monthly Journal for Computer Science and Engineering

ISSN : 2394-2320 (Online)

Automated Ground Harvesting Machine Using Image Processing

Author : Manjula S D 1 Chaitra C V A 2 Megha M 3 Rudragouda B 4 S Vinutha 5

Date of Publication :28th May 2021

Abstract: Agriculture is a main part of India's economy and at present it is among the top two rank makers in the world. This field provides roughly around 52 % of the total number of occupations in India and contributes around 18.1 percent to the GDP (Gross Domestic Product).For a country like India to gain profit it is necessary that rural and mechanical advancement ought to takeplace head to head.In India, the greater part of land used for rural section which produces semi-completed item. Around 65% of individuals rely upon agribusiness as a principle occupation.Since antiquated occasions cultivating is done physically which causes lesser efficiency and additional time requirement.The opportunity has arrived to modernize our cultivating cycle so profitability can be expanded. The fundamental target of the task is to build up the under grounded plants harvester thinking about the necessities of Indian ranchers. Among the field activities conserned with cultivation, collecting is the most difficult and exorbitant undertaking. Existing ground collectors are too gigantic to possibly be helpful for limited scope ranchers and in situation like multicroping. At first overview of common place ranch field has been done trailed by writing study, static examination, manufacture testing and plan adjustments. The existing harvester accessible currently is financially heavy which just only plucks the evacuated plants not the under established plants.

Reference :

    1. P. Udomkun, M. Nagle, D. Argyropoulos, B. Mahayothee, and J. Müller,''Multi-sensor way to deal with improve optical observing of papaya contract age during drying,'' J. Food Eng., vol. 189, pp. 82–89, Nov. 2016.
    2. Z. Wang, K. B. Walsh, and B. Verma, ''On-tree mango natural product size estima-tion utilizing RGB-D pictures,'' Sensors, vol. 17, no. 12, p. 2738, 2017.
    3. A. Tzounis, N. Katsoulas, T. Bartzanas, and C. Kittas, ''Internet of Things in agribusiness, ongoing advances and future difficulties,'' Biosyst. Eng., vol. 164, pp. 31– 48, Dec. 2017.
    4. N. Torbick, D. Chowdhury, W. Salas vol. 9, no. 2, p. 119, 2017. .
    5. M Kulbacki, J Segen, W Kniec., "Overview OF DRONES FOR AGRICULTURE AUTOMATION FROM PLANTING" , 2018 IEEE 22ndieeexplore.ieee.org
    6. T.U. Rehman, M.S. Mahmud, Y.K. Chang, et al."Current and future utilizations of measurable AI calculations for rural machine vision systemsComput Electron Agric", 156 (2019), pp. 585-605
    7. A. Khanna and S. Kaur, ''Evolution of Internet of Things (IoT) and its huge effect in the field of exactness farming,'' Comput. Electron. Agricult., vol. 157, pp. 218–231, Feb. 2019.
    8. Global Smart Farming Market to Reach $23.14 Billion by 2022.Accessed: Apr. 25, 2019. [Online]. Accessible: https://www.globenewswire.com/news discharge/2018/08/02/1546021/0/en/Global-SmartFarming-Market-to-Reach-23-14-Billion-by-2022.html
    9. Why IoT, Big Data and Smart Farming are the Future of Agri-culture. Gotten to: Apr. 17, 2019. [Online]. Accessible: https://www.businessinsider.com/web ofthings-shrewd horticulture 2016-10
    10. Huawei. The Connected Farm—A Smart Agriculture Market Assessment. Gotten to: Sep. 9, 2019. [Online]. Accessible: https://huaweihub. com.au/the-associated ranch a-keen horticulture market-evaluation/

    1. Nikhil Marathe, Ankita Gandhi and Jaimeel M Shah “Docker Swarm and Kubernetes in Cloud Computing Environment” 2019 ICOEI Third International Conference on Trends in Electronics and Informatics, IEEE Xplore Part Number: CFP19J32-ART; ISBN: 978-1-5386-9439-8
    2. Fuxin Liu, Jingwei Li, Yihong Wang and Lin Li “Kubestorage: A Cloud Native Storage Engine for Massive Small Files” 2019 6th International Conference on Behavioral, Economic and SocioCultural Computing
    3. “The NetApp Guide to Kubernetes” NetApp, Inc. 2020
    4. https://cloud.netapp.com/blog/cvo-blgkubernetesstorage-an-in-depth-look
    5. TME for Data Essentials - DevOps “Persistent Storage for Containerized Applications on Kubernetes with PowerMax SAN Storage” Dell Inc. October 2019
    6. Pramod K and Dr. Ramakanth Kumar P “Automatic Repaving of Unhealthy Nodes in Cloud Infrastructure” 2020 International Journal of Advanced Science and Technology Vol. 29, No. 04, pp. 7046 – 7054
    7. Sandor Acs, Mark Gergely, Peter Kacsuk and Miklos Kozlovszky “Block Level Storage Support for Open Source IaaS Clouds” 2013 21st Euromicro International Conference on Parallel, Distributed, and Network-Based Processing
    8. R. Arokia Paul Rajan, S. Shanmugapriyaa “Evolution of Cloud Storage as Cloud Computing Infrastructure Service” 2012 IOSR Journal of Computer Engineering (IOSRJCE) ISSN: 2278-0661 Volume 1, PP 38-45
    9. Jiyi WU, Lindi PING, Xiaoping GE, Ya Wang, Jianqing FU “Cloud Storage as the Infrastructure of Cloud Computing” 2010 International Conference on Intelligent Computing and Cognitive Informatics
    10. Xiaoming Gao, Mike Lowe, Yu Ma, and Marlon Pierce “Supporting Cloud Computing with the Virtual Block Store System” 2009 Fifth IEEE International Conference on e-Science
    11. https://docs.oracle.com/enus/iaas/Content/File/Concept s/filestorageoverview.htm
    12. https://docs.oracle.com/enus/iaas/Content/Block/Conce pts/overview.htm
    13. https://docs.oracle.com/enus/iaas/Content/ContEng/Tas ks/contengcreatingpersistentvolumeclaim.htm
    14. Louis Baumann, Stefan Benz, Leonardo Militano, Thomas Michael Bohnert “Monitoring Resilience in a Rook-managed Containerized Cloud Storage System” 2019 IEEE conference

Recent Article