Facial Gender Recognition Using GA
 

Facial Gender Recognition Using GA 1.0

Facial Gender Recognition Using GA : A system for facial gender recognition to use in Matlab.



This is a system for facial gender recognition that is capable to extract from image most informative features using an approach based on genetic algorithms. In psychology studies for HCI, the main focus is about how humans discriminate between males and females and what kind of features are more discriminative. A successful gender classification approach can boost the performance of many other applications including face recognition and smart human-computer interfaces. Despite its importance, it has received relatively little attention in the literature.

Conclusion

To conclude Facial Gender Recognition Using GA works on Windows operating system(s) and can be easily downloaded using the below download link according to Freeware license. Facial Gender Recognition Using GA download file is only 645 KB  in size.
Facial Gender Recognition Using GA was filed under the Science and Engineering category and was reviewed in softlookup.com and receive 4.9/5 Score.
Facial Gender Recognition Using GA has been tested by our team against viruses, spyware, adware, trojan, backdoors and was found to be 100% clean. We will recheck Facial Gender Recognition Using GA when updated to assure that it remains clean.

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Popularity 9.8/10 - Downloads - 93 - Score - 4.9/5

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Category: Science and Engineering 
Publisher: Luigi Rosa
Last Updated: 15/11/2023
Requirements: Not specified
License: Freeware
Operating system: Windows
Hits: 490
File size: 645 KB 
Price: Not specified


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