Enhancing Object Detection with Hybrid dataset in Manufacturing Environments: Comparing Federated Learning to Conventional Techniques
This study addresses the problem of robust object detection for manufacturing applications, but it is incremental as it compares existing methods without introducing new paradigms.
The paper tackled object detection in manufacturing by comparing Federated Learning (FL) to conventional techniques using a hybrid dataset, finding that FL outperformed centralized models and other deep learning methods in unseen environments with varied conditions.
Federated Learning (FL) has garnered significant attention in manufacturing for its robust model development and privacy-preserving capabilities. This paper contributes to research focused on the robustness of FL models in object detection, hereby presenting a comparative study with conventional techniques using a hybrid dataset for small object detection. Our findings demonstrate the superior performance of FL over centralized training models and different deep learning techniques when tested on test data recorded in a different environment with a variety of object viewpoints, lighting conditions, cluttered backgrounds, etc. These results highlight the potential of FL in achieving robust global models that perform efficiently even in unseen environments. The study provides valuable insights for deploying resilient object detection models in manufacturing environments.