Plants Species Recognition using Image Processing
Mr. Purushottam S. Chavan, Department of Computer Technology
K. K. WAGH POLYTECHNIC, Nashik pschavan@kkwagh.edu.in
Kshitija Mahesh Daware, Department of Computer Technology
K. K. WAGH POLYTECHNIC, Nashik dawarekshitija@gmail.com
Apurva Deepak Bhamare, Department of Computer Technology
K. K. WAGH POLYTECHNIC, Nashik ratnabhamare@gmail.com
Purva Manoj Chavan, Department of Computer Technology
K. K. WAGH POLYTECHNIC, Nashik purvachavan240@gmail.com
Yoginee Dinkar Khairnar, Department of Computer Technology
K. K. WAGH POLYTECHNIC, Nashik khairnaryoginee@gmail.com
---------------------------------------------------------------------***--------------------------------------------------------------------
Abstract –
Plant species reorganization is vital for biodiversity conservation and ecosystem preservation. Traditional methods, relying on manual labor and expert knowledge, are time-consuming and subjective, leading to inconsistencies. Emerging image processing techniques automate this process by leveraging algorithms for feature extraction and classification. These systems analyze plant samples' visual characteristics and match them with known species, eliminating human subjectivity for more reliable identification. Automation reduces time and effort, potentially making reorganization more cost-effective.
In recruitment, AI innovations optimize the interview process. An AI-based mock interview evaluator assesses candidate responses in simulated scenarios. Utilizing machine learning and natural language processing, it offers real-time feedback, enhancing the interview experience and providing insights for self-improvement. Candidates can choose between video and audio interviews, facilitating a seamless experience. The system analyzes facial expressions, capturing emotional cues for comprehensive evaluation. Post-interview, candidates receive immediate feedback with visual performance representations, aiding in identifying areas for improvement and tracking progress.
Key Words:
Image Processing, Plant Species,Support vector machines(SVM), random forests(RF),Decision Tree(DT),Convolutional neural networks(CNN), Preprocessing ,Classification.