The Study on Video Segmentation Algorithm Based on Edge and Color Features in Rainy Situation

碩士 === 國立高雄應用科技大學 === 電子與資訊工程研究所碩士班 === 94 === Video segmentation is key role for developing technique (e.g. index-retrieval, compression or representation) of content-based video processing. In practically, it can be implemented in pre-processing for contend-based video system in order to separate...

Full description

Bibliographic Details
Main Authors: Hung-Shiuan Liau, 廖鴻軒
Other Authors: Thou-Ho Chen
Format: Others
Language:zh-TW
Published: 2006
Online Access:http://ndltd.ncl.edu.tw/handle/71022854429523948961
id ndltd-TW-094KUAS0393019
record_format oai_dc
spelling ndltd-TW-094KUAS03930192015-10-13T10:38:07Z http://ndltd.ncl.edu.tw/handle/71022854429523948961 The Study on Video Segmentation Algorithm Based on Edge and Color Features in Rainy Situation 基於雨天環境中邊緣和色彩特性的視訊切割演算法之研究 Hung-Shiuan Liau 廖鴻軒 碩士 國立高雄應用科技大學 電子與資訊工程研究所碩士班 94 Video segmentation is key role for developing technique (e.g. index-retrieval, compression or representation) of content-based video processing. In practically, it can be implemented in pre-processing for contend-based video system in order to separate the video into many video objects. Many proposed video segmentation algorithms which are aimed at specific sequence (e.g. indoor environment) or outdoor environment in clear day. However, there restrictions hardly make it to be invalid in bad situation. In this dissertation, we propose a video object segmentation algorithm based on edge and color features combined edge detection and change detection in rainy situation that avoidance accuracy of segment video object reduced in bad environment. The characteristic of moving object will be obtained by HSI color transform and analysis. The edge detection is used to obtain edges of moving object from video frame, which raindrops can be avoid to decision to moving object in dynamic background due to a large number of raindrops moving at high speeds. Then, the object region detection is used to get correct object mask and can solve the uncovered background problem and still object problem. After above step, a problem can be solved that the reflection region of moving object in the environment will be removed by bounding box match method. Finally, subjective and objective evaluation of this algorithm is showed and demonstrates spatial accuracy of our algorithm can maintain a high accuracy above 80 percent in scenes captured by the fixed camera. Thou-Ho Chen 陳昭和 2006 學位論文 ; thesis 85 zh-TW
collection NDLTD
language zh-TW
format Others
sources NDLTD
description 碩士 === 國立高雄應用科技大學 === 電子與資訊工程研究所碩士班 === 94 === Video segmentation is key role for developing technique (e.g. index-retrieval, compression or representation) of content-based video processing. In practically, it can be implemented in pre-processing for contend-based video system in order to separate the video into many video objects. Many proposed video segmentation algorithms which are aimed at specific sequence (e.g. indoor environment) or outdoor environment in clear day. However, there restrictions hardly make it to be invalid in bad situation. In this dissertation, we propose a video object segmentation algorithm based on edge and color features combined edge detection and change detection in rainy situation that avoidance accuracy of segment video object reduced in bad environment. The characteristic of moving object will be obtained by HSI color transform and analysis. The edge detection is used to obtain edges of moving object from video frame, which raindrops can be avoid to decision to moving object in dynamic background due to a large number of raindrops moving at high speeds. Then, the object region detection is used to get correct object mask and can solve the uncovered background problem and still object problem. After above step, a problem can be solved that the reflection region of moving object in the environment will be removed by bounding box match method. Finally, subjective and objective evaluation of this algorithm is showed and demonstrates spatial accuracy of our algorithm can maintain a high accuracy above 80 percent in scenes captured by the fixed camera.
author2 Thou-Ho Chen
author_facet Thou-Ho Chen
Hung-Shiuan Liau
廖鴻軒
author Hung-Shiuan Liau
廖鴻軒
spellingShingle Hung-Shiuan Liau
廖鴻軒
The Study on Video Segmentation Algorithm Based on Edge and Color Features in Rainy Situation
author_sort Hung-Shiuan Liau
title The Study on Video Segmentation Algorithm Based on Edge and Color Features in Rainy Situation
title_short The Study on Video Segmentation Algorithm Based on Edge and Color Features in Rainy Situation
title_full The Study on Video Segmentation Algorithm Based on Edge and Color Features in Rainy Situation
title_fullStr The Study on Video Segmentation Algorithm Based on Edge and Color Features in Rainy Situation
title_full_unstemmed The Study on Video Segmentation Algorithm Based on Edge and Color Features in Rainy Situation
title_sort study on video segmentation algorithm based on edge and color features in rainy situation
publishDate 2006
url http://ndltd.ncl.edu.tw/handle/71022854429523948961
work_keys_str_mv AT hungshiuanliau thestudyonvideosegmentationalgorithmbasedonedgeandcolorfeaturesinrainysituation
AT liàohóngxuān thestudyonvideosegmentationalgorithmbasedonedgeandcolorfeaturesinrainysituation
AT hungshiuanliau jīyúyǔtiānhuánjìngzhōngbiānyuánhésècǎitèxìngdeshìxùnqiègēyǎnsuànfǎzhīyánjiū
AT liàohóngxuān jīyúyǔtiānhuánjìngzhōngbiānyuánhésècǎitèxìngdeshìxùnqiègēyǎnsuànfǎzhīyánjiū
AT hungshiuanliau studyonvideosegmentationalgorithmbasedonedgeandcolorfeaturesinrainysituation
AT liàohóngxuān studyonvideosegmentationalgorithmbasedonedgeandcolorfeaturesinrainysituation
_version_ 1716832193965195264