Vinayak Elangovan
Papers
1
Total Citations
9
H-Index
1
About
Vinayak Elangovan is a researcher specializing in computer vision, deep learning, and intelligent automation systems. His work focuses on applying advanced machine learning techniques to solve practical industrial challenges, particularly in the domain of automated object recognition and classification. His most notable contribution, "Object Sorting using Faster R-CNN" (2020), demonstrates the application of convolutional neural network-based detection frameworks to automate factory production line sorting — a task traditionally reliant on manual human effort. By leveraging the Faster R-CNN architecture, his research addresses the differentiation and categorization of industrial parts varying in color and shape, offering a scalable solution that enhances manufacturing efficiency and reduces human error. This work has garnered 9 citations, reflecting its relevance to the growing intersection of industrial automation and artificial intelligence. Elangovan's research sits at a meaningful crossroads between academic deep learning methodology and real-world engineering application, making his contributions particularly valuable to students and practitioners interested in deploying computer vision solutions within smart manufacturing and Industry 4.0 environments. His work underscores the transformative potential of object detection models in streamlining complex industrial workflows.
Research Focus
Key Achievements
Top Papers
- 1Object Sorting using Faster R-CNN9 citations · 2020
Key Collaborators
Related papers
- Object sorting using faster R-CNN
- Object Sorting using Faster R-CNN
- Implementation of Faster RCNN Algorithm for Smart Robotic ARM Based on Computer Vision
- Towards Industry 4.0: Color-Based Object Sorting Using a Robot Arm and Real-Time Object Detection
- Object Color Identification and Classification using CNN Algorithm and Machine Learning Technique
Researchers in this area
Labs working in this area
Suggested by topic similarity — not advertising or endorsement.