We report findings from a comparative evaluation of several recent object detection models
applied to a domain-specific use case in technical document analysis and graphics recognition. More
specifically, we apply models from the EfficientDet and YOLO model families to detect and classify
figures in electronics datasheets according to a custom classification scheme. We identify YOLOv7-D6
as the most accurate model in our study and show that it can successfully solve this task. We highlight
an iterative approach to figure annotation in document page images for creating a comprehensive
and balanced custom dataset for our use case. In our experiments, the object detection models show
impressive performance levels on par with state-of-the-art results from the literature and related
studies.
«
We report findings from a comparative evaluation of several recent object detection models
applied to a domain-specific use case in technical document analysis and graphics recognition. More
specifically, we apply models from the EfficientDet and YOLO model families to detect and classify
figures in electronics datasheets according to a custom classification scheme. We identify YOLOv7-D6
as the most accurate model in our study and show that it can successfully solve this task. We highlight...
»