摘要
The microstructural characteristics of spherical metal powders play an important role in determining the quality of mechanical parts manufactured by powder metallurgy processes.Identifying the individual powder particles from their microscopic images is one of the most convenient and cost-efficient methods for the analysis of powder characteristics.Although numerous image processing algorithms have been developed for automating the powder particle identification process,they perform less accurately in identifying adjacent particles that are heavily overlapped in their image regions.We propose an automatic algorithm to robustly and accurately identify spherical powder particles,especially heavily overlapped particles,from their microscope images.A parallel computing framework is designed to further enhance the computational efficiency of the proposed algorithm.Powder characteristics such as particle size distribution and the location of potential satellite particles have been derived from our identification results.The accuracy and efficiency of our algorithm are validated by real-world scanning electron microscope images,outperforming other existing methods and achieving both precision and recall above 99%.