News:

Welcome to the Chironomid Exchange Forum! Use this resource to discuss midge matters with the world-wide community of researchers, and to stay up-to-date on important data, e.g. in standard reference publications.
Please report to moderators any spammers or attempts to use this forum for purposes other than the exchange of scientific information related to the science of Chironomidae or entomology. Thank you!
Ethan and Martin - Moderators

Main Menu

Post reply

The message has the following error or errors that must be corrected before continuing:
Warning: this topic has not been posted in for at least 120 days.
Unless you're sure you want to reply, please consider starting a new topic.
Other options
Verification:
Please leave this box empty:
Type the letters shown in the picture
Listen to the letters / Request another image

Type the letters shown in the picture:
In what Meigen 1800 family name is Orthocladius?:
What organization voided Meigen 1800 names?:
Shortcuts: ALT+S post or ALT+P preview

Topic summary

Posted by Martin Spies
 - July 16, 2022, 11:46:45 AM
2022

Hollister, J., Vega, R., Azhar, M. A. H. B. (2022) Automatic identification of non-biting midges (Chironomidae) using object detection and deep learning techniques. Pp. 256-263 in: De Marsico, M., Sanniti di Baja, G., Fred, A. (eds), Proceedings of the 11th International Conference on Pattern Recognition Applications and Methods (ICPRAM 2022). scitepress.org (DOI: 10.5220/0000155500003122).
Posted by Martin Spies
 - December 09, 2019, 02:06:32 PM
2019

Milošević, D., Milosavljević, A., Predić, B., Medeiros, A. S., Savić-Zdravković, D., Stojković Piperac, M., Kostić, T., Spasić, F., Leese, F. (2019) Application of deep learning in aquatic bioassessment: Towards automated identification of non-biting midges. Sci. total Envir.: 7 pp. + online suppl. material. [first publd online 14.xi.2019]