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Muhammad Abdul Rehman Shah

FAST · 2022 · I18-1566
Email
Phone
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Academic

Program
BSCS
CGPA
Year
2022
Education
SEECS
Address
DOB

Career

Current role
Target role
Skills
Python, TensorFlow, TFLite, OpenCV, PIL, Swift, Kaggle, Deep Learning, iOS Development

Verbatim text

The exact text the LLM saw on the page (or the booklet text from the old import). This is what powers semantic search.
Pest Recognition of Images using Deep Learning 
 
Our project focuses on using various deep learning techniques on images of a variety of pests to 
come up with an effective model to classify images of pest. This project has direct significance in 
the field of agriculture where tones of crops are wasted just because farmers can’t recognize and 
prevent pest attacks on their crops. According to research (At Least 40% Global Crops Lost to Pests 
Every Year: FAO, n.d.) 40% of the global crops are annually wasted to pests amounting to around 
€69 billions of economic loss that is enough to feed around 1 billion people annually.  
We discovered a dataset of labelled pest images called IP102 (Wu et al., 2019) which comprises 
more than 75000 images of 102 classes of pests. 
During FYP-1, we focused on developing a model that classifies the images of pests in the IP102 
dataset and used different feature extraction, data pre- processing and deep learning techniques to 
prepare our dataset and train it to come up with a base line model. Then we fine-tuned our model 
and performed data augmentation techniques to increase its accuracy in FYP-2. We then embedded 
the best model as a TFLite model into an iOS mobile application using Swift. 
 
 
 
 
 
 
 
Technology Used: 
Python, TensorFlow, TFLite, OpenCV, 
 PIL, Swift, Kaggle 
Supervisor Name: 
Dr Labiba Fahad 
Group Members:   
Muhammad Abdullah (I18-0416) 
Muhammad Abdul Rehman Shah (I18-1566)

AI enrichment

Muhammad Abdul Rehman Shah is a BSCS graduate who developed a deep learning model for pest image classification using the IP102 dataset. He implemented data augmentation and fine-tuning techniques to improve accuracy, then deployed the optimized model as a TFLite application within an iOS app using Swift.
Skills (AI)
["Python", "TensorFlow", "TFLite", "OpenCV", "PIL", "Swift", "Deep Learning", "Image Classification", "Data Augmentation", "Mobile App Development"]
Status: ai_done
Provenance
Source file: Graduate Directory FAST School of Computing 2022 Final Version (07-06-2022).pdf
From job #25 page 251
Created: 1778170963