Publications by authors named "Lambodar Jena"

This paper introduces a mobile cloud-based predictive model for assisting Parkinson's disease (PD) patients. PD, a chronic neurodegenerative disorder, impairs motor functions and daily tasks due to the degeneration of dopamine-producing neurons in the brain. The model utilizes smartphones to aid patients in collecting voice samples, which are then sent to a cloud service for storage and processing.

View Article and Find Full Text PDF

Collaborative modelling of the Internet of Things (IoT) with Artificial Intelligence (AI) has merged into the Intelligence of Things concept. This recent trend enables sensors to track required parameters and store accumulated data in cloud storage, which can be further utilized by AI based predictive models for automatic decision making. In a smart and sustainable environment, effective waste management is a concern.

View Article and Find Full Text PDF

In the past few years, classification has undergone some major evolution. With a constant surge of the amount of data gathered from different sources, efficient processing and analysis of data is becoming difficult. Due to the uneven distribution of data among classes, data classification with machine-learning techniques has become more tedious.

View Article and Find Full Text PDF

Synopsis of recent research by authors named "Lambodar Jena"

  • - Lambodar Jena's research primarily focuses on developing innovative computational models and applications for healthcare and environmental challenges, notably in neurodegenerative disorders and waste management.
  • - His recent work includes the "PD-DETECTOR" mobile application, which leverages cloud technology for assessing Parkinson's disease severity through voice samples, enhancing patient monitoring and support.
  • - Additionally, Jena explores the integration of IoT and AI in waste management systems to streamline decision-making processes, alongside methods for optimizing data classification in machine learning to address issues related to skewed data distributions.