A Deep Metric Learning Method with Combined Loss of Triplet Network and Autoencoder

Autor: Chien-Cheng Tsenga, Po-Hsuan Yen, Su-Ling Lee
Rok vydání: 2021
Předmět:
Zdroj: ICCE-TW
DOI: 10.1109/icce-tw52618.2021.9603004
Popis: In this paper, a deep metric learning method with combined loss of the triplet network and autoencoder is presented. Autoencoder is regarded as the regulation network to enable the embedding vector to have some latent features of the input image, and improve its performance. Compared with the pure triplet network, although it increases some complexity during training due to the addition of the decoder, but during testing, their complexities are exactly the same, because the decoder can be completely removed after training. The experiments of the proposed method, triplet network, and one-hot encoded network are performed on various character datasets to show that the proposed method not only achieve better classification performance, but also inherit the benefits of deep metric learning.
Databáze: OpenAIRE