• Title/Summary/Keyword: Transposed Convolutional Layer

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Facial Landmark Detection by Stacked Hourglass Network with Transposed Convolutional Layer (Transposed Convolutional Layer 기반 Stacked Hourglass Network를 이용한 얼굴 특징점 검출에 관한 연구)

  • Gu, Jungsu;Kang, Ho Chul
    • Journal of Korea Multimedia Society
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    • v.24 no.8
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    • pp.1020-1025
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    • 2021
  • Facial alignment is very important task for human life. And facial landmark detection is one of the instrumental methods in face alignment. We introduce the stacked hourglass networks with transposed convolutional layers for facial landmark detection. our method substitutes nearest neighbor upsampling for transposed convolutional layer. Our method returns better accuracy in facial landmark detection compared to stacked hourglass networks with nearest neighbor upsampling.

A Study on Atmospheric Data Anomaly Detection Algorithm based on Unsupervised Learning Using Adversarial Generative Neural Network (적대적 생성 신경망을 활용한 비지도 학습 기반의 대기 자료 이상 탐지 알고리즘 연구)

  • Yang, Ho-Jun;Lee, Seon-Woo;Lee, Mun-Hyung;Kim, Jong-Gu;Choi, Jung-Mu;Shin, Yu-mi;Lee, Seok-Chae;Kwon, Jang-Woo;Park, Ji-Hoon;Jung, Dong-Hee;Shin, Hye-Jung
    • Journal of Convergence for Information Technology
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    • v.12 no.4
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    • pp.260-269
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    • 2022
  • In this paper, We propose an anomaly detection model using deep neural network to automate the identification of outliers of the national air pollution measurement network data that is previously performed by experts. We generated training data by analyzing missing values and outliers of weather data provided by the Institute of Environmental Research and based on the BeatGAN model of the unsupervised learning method, we propose a new model by changing the kernel structure, adding the convolutional filter layer and the transposed convolutional filter layer to improve anomaly detection performance. In addition, by utilizing the generative features of the proposed model to implement and apply a retraining algorithm that generates new data and uses it for training, it was confirmed that the proposed model had the highest performance compared to the original BeatGAN models and other unsupervised learning model like Iforest and One Class SVM. Through this study, it was possible to suggest a method to improve the anomaly detection performance of proposed model while avoiding overfitting without additional cost in situations where training data are insufficient due to various factors such as sensor abnormalities and inspections in actual industrial sites.