Development of AI-based software of mango variety identification

Mango is a rich source of nutrients fulfilling the dietary requirements of consumers. Mango fruit contains an array of biochemicals having anti-oxidant activity. Chromatographic and spectroscopic techniques are used for the isolation and identification of mango biochemicals. Different

2025-06-28 16:32:03 - Adil Khan

Project Title

Development of AI-based software of mango variety identification

Project Area of Specialization Artificial IntelligenceProject Summary

Mango is a rich source of nutrients fulfilling the dietary requirements of consumers. Mango fruit contains an array of biochemicals having anti-oxidant activity. Chromatographic and spectroscopic techniques are used for the isolation and identification of mango biochemicals. Different mango varieties are shown to have characteristic variations in their HPLC chromatograms based on biochemical components. By exploiting the variation in mango fruit biochemical content, we aimed to develop an AI based software for mango variety identification. Currently, there is no such in-silico technology available to validate claims of the food industry or to evaluate mango cultivars. Utilizing the variety-specific data of mango biochemical contents, we wish to establish characteristic spectral peak patterns of Pakistan’s commercial mango varieties and then applying tools of artificial intelligence to device software. Such an efficient identification program would prove to be helpful in the quality characterization of mango cultivars and post-harvest handling optimizations to conserve the fruit's antioxidant capability.

Project Objectives Project Implementation Method
  1. Mango fruit pulp shall be subjected to biochemical extraction through maceration with the fixed combination of polar solvents.
  2. Fruit pulp extracts shall then be centrifuged and evaporated under pressure to separate unwanted carbohydrates and other polar solvents.
  3. Aqueous extracts shall then be utilized for HPLC analysis to establish variety-specific patterns.
  4. To classify the mango varieties we will use machine learning algorithms. We will test several algorithms such as support vector machines, decision trees, random forests, and logistic regressions.
  5. We will perform a comparative analysis to find out the best algorithm among these.
  6. Scikit learn (python implementation of machine learning) shall be utilized to extract information and identify patterns in chromatographic data.
  7. Train data sets and validate them under supervised learning
  8. The established method shall then be applied to sample data sets to obtain identification results.  
Benefits of the Project

The present project is anticipated to provide the following benefits;

Technical Details of Final Deliverable Final Deliverable of the Project Software SystemCore Industry AgricultureOther Industries Food Core Technology Artificial Intelligence(AI)Other TechnologiesSustainable Development Goals Good Health and Well-Being for PeopleRequired Resources
Item Name Type No. of Units Per Unit Cost (in Rs) Total (in Rs)
Total in (Rs) 80000
Sonicator for HPLC Equipment17000070000
Chemicals and consumables Miscellaneous 11000010000

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