DEEP TRANSFER LEARNING FROM FACE RECOGNITION FOR FACIAL DIAGNOSIS APPLICATIONS

Authors:

Dr. K. Maheswari, Avirineni Rahul, Boini Laxmi Vara Prasad, Jangili Shiva Pranav

Page No: 1175-1180

Abstract:

Individuals have examined the connection among ailment and the face for millennia, which prompted the making of facial investigation. Profound learning calculations will be utilized to examine the capability of diagnosing illnesses from arbitrary 2D face pictures. In this paper, we advocate driving PC helped facial ID on various issues by using profound trade gaining from face acknowledgment. PC supported face recognizable proof of a solitary problem (beta-thalassemia) and various problems (hyperthyroidism, Down condition, and sickness) is done in explore with a moderately little dataset. In the tests, deep transfer learning from face acknowledgment outflanked ordinary ML techniques and doctors with top-1 exactness of practically 90%. Because of the administration of individual information, it is troublesome, costly, and tedious to gather sickness explicit face photographs by and by. Face symptomatic exploration data sets, as opposed to data sets used in other AI application areas, are many times private and limited. Profound exchange learning programs that are great in face examination with a short dataset could offer a minimal expense and subtle procedure for sickness observing and revelation.

Description:

Facial diagnosis, deep transfer learning (DTL), face recognition, beta-thalassemia, hyperthyroidism, down syndrome, leprosy

Volume & Issue

Volume-12,Issue-4

Keywords

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