Faculty Dr Anuj Deshpande

Assistant Professor

Dr Anuj Deshpande

Department of Electronics and Communication Engineering

Interests
  • Biomedical Signal and Image Processing
  • Computational Biology
  • Control Systems Applications in Biology
  • Systems Biology
Faculty Dr Anuj Deshpande
Education
2009
Bachelors
Pune University
India
2012
Masters
SRTMU, Nanded
India
2019
Ph.D.
Indian Institute of Technology, Kharagpur
India
Experience
  • August 2009 to July 2010, Teaching Assistant | BITS Pilani - Goa Campus
  • July 2012 to July 2018, Teaching Assistant | IIT Kharagpur
Research Interests
  • Fault analysis and therapeutic intervention in genetic regulatory networks
  • A synthetic model to mimic all the activities of a single cell
  • Mathematical modelling for diseased cell analysis
Awards & Fellowships
  • 2010 – 2012, MTech Scholarship, MHRD, Govt. of India
  • 2012 – 2016, Institute fellowship for Doctoral studies at IIT Kharagpur, MHRD, Govt. o f India
Memberships
  • IEEE Member
Publications
  • Machine Learning Assisted Image Analysis for Microalgae Prediction

    Dr Karthik Rajendran, Dr Anuj Deshpande, Dr Sunil Chinnadurai

    Source Title: ACS ES and T Engineering, DOI Link, View abstract ⏷

    Microalgae-based wastewater treatment has resulted in a paradigm shift toward nutrient removal and simultaneous resource recovery. However, traditionally used microalgal biomass quantification methods are time-consuming and costly, limiting their large-scale use. The aim of this study is to develop a simple and cost-effective image-based method for microalgae quantification, replacing cumbersome traditional techniques. In this study, preprocessed microalgae images and associated optical density data were utilized as inputs. Three feature extraction methods were compared alongside eight machine learning (ML) models, including linear regression (LR), random forest (RF), AdaBoost, gradient boosting (GB), and various neural networks. Among these algorithms, LR with principal component analysis achieved an R2 value of 0.97 with the lowest error of 0.039. Combining image analysis and ML removes the need for expensive equipment in microalgae quantification. Sensitivity analysis was performed by varying the train-test splitting ratio. Training time was included in the evaluation, and accounting for energy consumption in the study leads to the achievement of high model performance and energy-efficient ML model utilization. © 2024 American Chemical Society.
Contact Details

deshpande.a@srmap.edu.in

Scholars

Doctoral Scholars

  • Sravan Kumar
  • Pooja A Nair