The main objective of this project is to detect crop/plant detection using deep learning algorithm YOLO v22.
In modern days, weed identification / plant detection in plants is more difficult. There has been little work so far to identify weeds while planting vegetables. Traditional approaches for the identification of agricultural weed were primarily directed at directly identifying weed; nevertheless, the variations in weed species are significant.
This study presents a novel technique, which merges deep learning with imaging technology, as opposed to this method. First, the YOLO v2 model was trained to identify and draw boundary boxes for plants surrounding it. Then, the remaining green items fell from the border boxes like weeds. In this approach, just the crops are identified and other weed species are thereby prevented from being handled.
These experiment results demonstrate the feasibility of using the proposed method for the ground-based plant identification in vegetable plantation.
Keywords: Plant identification, deep learning, image processing, deep learning, YOLO v2.
NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.
Software: Matlab 2020a or above
Hardware:
Operating Systems:
Processors:
Minimum: Any Intel or AMD x86-64 processor
Recommended: Any Intel or AMD x86-64 processor with four logical cores and AVX2 instruction set support
Disk:
Minimum: 2.9 GB of HDD space for MATLAB only, 5-8 GB for a typical installation
Recommended: An SSD is recommended A full installation of all MathWorks products may take up to 29 GB of disk space
RAM:
Minimum: 4 GB
Recommended: 8 GB