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  Published Paper Details:

  Paper Title

Deep learning based weed crop detection for smart agriculture

  Authors

  Rajendrakumar

  Keywords

Keywords: Deep Learning, Weed Detection, Crop Classification, Smart Agriculture, Convolution Neural Networks (CNN), Image Processing, Precision Farming

  Abstract


Abstract Deep learning-based weed crop for farmers represent an innovative application of artificial intelligence in agriculture. These drones are designed to identify and pluck weed from plants with precision and efficiency, reducing labor costs and improving productivity. Automation in the agricultural industry moderates the usage of resources and can increase the quality of food in the post-pandemic world. Agricultural robots have been developed for crop seeding, monitoring, weed control, pest management and harvesting. Physical counting of fruitless, flowers or fruits at various phases of growth is labor intensive as well as an expensive procedure for crop yield estimation. Remote sensing technologies offer accuracy and reliability in crop yield prediction and estimation. The automation in image analysis with computer vision and deep learning models provides precise field and yield maps. In this review, it has been observed that the application of deep learning techniques has provided a better accuracy for smart farming. As the demand for pollution-free and organic agricultural products rises, there is a pressing need for innovative solutions. The emergence of smart agricultural equipment, including intelligent robots, unmanned aerial vehicles and satellite technology, proves to be pivotal in addressing weed-related challenges. The effectiveness of smart agricultural equipment, however, things on accurate detection, a task influenced by various factors, like growth stages, environmental conditions and shading. To achieve precise crop identification, it is essential to employ suitable sensors and optimized algorithms. Deep learning plays a crucial role in enhancing weed recognition accuracy. This advancement enables targeted actions such as minimal pesticide spraying or precise laser excision of weeds, effectively reducing the overall cost of agricultural production. Keyword Deep Learning, Data Collection: Model Training: Semantic Segmentation Robotics and Drones: Spraying Mechanism, Edge Computing.

  IJCRT's Publication Details

  Unique Identification Number - IJCRT1135680

  Paper ID - 267287

  Page Number(s) - 667-671

  Pubished in - Volume 7 | Issue 1 | January 2019

  DOI (Digital Object Identifier) -   

  Publisher Name - IJCRT | www.ijcrt.org | ISSN : 2320-2882

  E-ISSN Number - 2320-2882

  Cite this article

  Rajendrakumar,   "Deep learning based weed crop detection for smart agriculture", International Journal of Creative Research Thoughts (IJCRT), ISSN:2320-2882, Volume.7, Issue 1, pp.667-671, January 2019, Available at :http://www.ijcrt.org/papers/IJCRT1135680.pdf

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ISSN: 2320-2882
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Journal Starting Year (ESTD) : 2013
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ISSN and 7.97 Impact Factor Details


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ISSN
ISSN: 2320-2882
Impact Factor: 7.97 and ISSN APPROVED
Journal Starting Year (ESTD) : 2013
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