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    1

    A Study of Depth Images Denoising with Deep Convolutional Neural Networks

    2

    A Study of Cars, Pedestrians, and Cyclists Prediction in Low Visibility Scenes with Augmented Image Sets

    3

    A Study of Different Deep Convolutional Neural Networks on Objectionable Images Classification

    4

    Applications of Transfer Learning in Indoor Scene Classification

    5

    A Study of Salient Object Subitizing with Deep Convolutional Neural Networks
    • Department of Computer Science and Information Engineering /104/ Master
    • Author: Hung-Chen Chiu Advisor:
    • People can quickly tell the number of salient objects (1, 2, 3 or 4+) in a image or scene. This phe…
    • Clicks: 556Downloads: 0
    • Full text public date 2021/07/19 (Intranet public)
    • Full text public date This full text is not authorized to be published. (Internet public)
    • Full text public date This full text is not authorized to be published. (National library)

    6

    Using Convolutional Neural Network for Classifying Music Genre Based on Samples
    • Department of Computer Science and Information Engineering /105/ Master
    • Author: Cheng-Lung Yeh Advisor:
    • The ability of using convolutional neural network (CNN) for classified image have been proved effic…
    • Clicks: 639Downloads: 0
    • Full text public date 2022/07/18 (Intranet public)
    • Full text public date This full text is not authorized to be published. (Internet public)
    • Full text public date This full text is not authorized to be published. (National library)

    7

    A Study of Racial Face Recognition Using Synthetic Images with Deep Convolutional Neural Networks
    • Department of Computer Science and Information Engineering /105/ Master
    • Author: Yen-Lun Chen Advisor:
    • In the past, people usually employ the facial feature extraction and shallow learners such as decis…
    • Clicks: 664Downloads: 7
    • Full text public date 2018/07/18 (Intranet public)
    • Full text public date 2027/07/18 (Internet public)
    • Full text public date 2027/07/18 (National library)

    8

    A Study of Objectionable Images Classification with Deep Convolutional Neural Networks
    • Department of Computer Science and Information Engineering /104/ Master
    • Author: Ting-Hsiu Lee Advisor:
    • In the past, people usually use the skin feature extract or the keywords for text contents combined…
    • Clicks: 561Downloads: 0
    • Full text public date 2021/07/12 (Intranet public)
    • Full text public date This full text is not authorized to be published. (Internet public)
    • Full text public date This full text is not authorized to be published. (National library)

    9

    A Study of RGB-Depth Camera Calibration with Direct Linear Transformation
    • Department of Computer Science and Information Engineering /103/ Master
    • Author: Bo-Shen Jhou Advisor:
    • In recent years, cameras equipped with depth sensors is a trend. The depth information makes the de…
    • Clicks: 619Downloads: 0
    • Full text public date 2020/07/30 (Intranet public)
    • Full text public date This full text is not authorized to be published. (Internet public)
    • Full text public date This full text is not authorized to be published. (National library)

    10

    A Study of General Fine-Grained Classification with Deep Convolutional Neural Networks
    • Department of Computer Science and Information Engineering /103/ Master
    • Author: Tsu-Hsien Lee Advisor:
    • Deep Learning usually takes lots of time to train. Without super GPUs, the training time may take 2…
    • Clicks: 553Downloads: 1
    • Full text public date 2020/07/20 (Intranet public)
    • Full text public date This full text is not authorized to be published. (Internet public)
    • Full text public date This full text is not authorized to be published. (National library)