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UT Tehuacán

Centro de Recursos Digitales

Loss function for ambiguous boundaries for deep neural network (DNN) for image segmentation

Abstract

This study deals with the task of segmentation of SEM images of fine ceramics sintered bodies by using deep neural network (DNN). In particular, we focus on misclassification caused by the blurriness of grain boundaries(boundaries between particles). Therefore, we utilize the frequency distribution of brightness gradient of grain boundaries and give higher weights to pixels with lower gradient values. Experiments confirmed that the model trained with proposed loss function gave the best prediction results.

Leer más Electronics and Communications in Japan, Volume 106, Issue 4, December 2023. 

Loss function for ambiguous boundaries for deep neural network (DNN) for image segmentation

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