RodNet: Deep Network for Object Detection at Night

碩士 === 國立臺北科技大學 === 電子工程系 === 108 === Existing learning-based object detection methods often utilize huge amont of clean images and relatively few of low-quality images for training the neural networks. However, despite the good results they achieved on those clean data, it often struggled when it c...

Full description

Bibliographic Details
Main Authors: LIN, I-CHUAN, 林邑撰
Other Authors: Shih-Chia Huang
Format: Others
Language:en_US
Published: 2019
Online Access:http://ndltd.ncl.edu.tw/handle/urvhpv
id ndltd-TW-107TIT00427049
record_format oai_dc
spelling ndltd-TW-107TIT004270492019-10-20T07:03:08Z http://ndltd.ncl.edu.tw/handle/urvhpv RodNet: Deep Network for Object Detection at Night RodNet:基於深度學習之夜間情境物件偵測技術 LIN, I-CHUAN 林邑撰 碩士 國立臺北科技大學 電子工程系 108 Existing learning-based object detection methods often utilize huge amont of clean images and relatively few of low-quality images for training the neural networks. However, despite the good results they achieved on those clean data, it often struggled when it comes to those low-quality one because of its non-specified training policy. In this work, we present a conceptually simple and light-weighted framework for object detection in multiple domain data by using the feature domain transformation via Generative Adversarial Networks (GAN). As demonstrated in the experiment section, the proposed training policy can effectively learns the feature domain adaptation via an unsupervised manner, achieving state-of-the-art performance in the proposed multi domain dataset without any additional com- putational cost as well as network modifications. In addition, our experiment also shows the possibility of correctly applying GAN framework on feature spaces can benefits high-level computer vision tasks. Shih-Chia Huang 黃士嘉 2019 學位論文 ; thesis 19 en_US
collection NDLTD
language en_US
format Others
sources NDLTD
description 碩士 === 國立臺北科技大學 === 電子工程系 === 108 === Existing learning-based object detection methods often utilize huge amont of clean images and relatively few of low-quality images for training the neural networks. However, despite the good results they achieved on those clean data, it often struggled when it comes to those low-quality one because of its non-specified training policy. In this work, we present a conceptually simple and light-weighted framework for object detection in multiple domain data by using the feature domain transformation via Generative Adversarial Networks (GAN). As demonstrated in the experiment section, the proposed training policy can effectively learns the feature domain adaptation via an unsupervised manner, achieving state-of-the-art performance in the proposed multi domain dataset without any additional com- putational cost as well as network modifications. In addition, our experiment also shows the possibility of correctly applying GAN framework on feature spaces can benefits high-level computer vision tasks.
author2 Shih-Chia Huang
author_facet Shih-Chia Huang
LIN, I-CHUAN
林邑撰
author LIN, I-CHUAN
林邑撰
spellingShingle LIN, I-CHUAN
林邑撰
RodNet: Deep Network for Object Detection at Night
author_sort LIN, I-CHUAN
title RodNet: Deep Network for Object Detection at Night
title_short RodNet: Deep Network for Object Detection at Night
title_full RodNet: Deep Network for Object Detection at Night
title_fullStr RodNet: Deep Network for Object Detection at Night
title_full_unstemmed RodNet: Deep Network for Object Detection at Night
title_sort rodnet: deep network for object detection at night
publishDate 2019
url http://ndltd.ncl.edu.tw/handle/urvhpv
work_keys_str_mv AT linichuan rodnetdeepnetworkforobjectdetectionatnight
AT línyìzhuàn rodnetdeepnetworkforobjectdetectionatnight
AT linichuan rodnetjīyúshēndùxuéxízhīyèjiānqíngjìngwùjiànzhēncèjìshù
AT línyìzhuàn rodnetjīyúshēndùxuéxízhīyèjiānqíngjìngwùjiànzhēncèjìshù
_version_ 1719272520311373824