研究生: |
林定佑 Ding-yu Lin |
---|---|
論文名稱: |
結合光源正規化與局部特徵之稀疏表示法處理變化光源下之人臉辨識 Illumination Normalized and Component Oriented Sparse Representation for Illumination Invariant Face Recognition |
指導教授: |
徐繼聖
Gee-Sern Hsu |
口試委員: |
洪一平
Yi-Ping Hung 莊永裕 Yung-Yu Chuang 郭景明 Jing-Ming Guo |
學位類別: |
碩士 Master |
系所名稱: |
工程學院 - 機械工程系 Department of Mechanical Engineering |
論文出版年: | 2013 |
畢業學年度: | 101 |
語文別: | 中文 |
論文頁數: | 77 |
中文關鍵詞: | 稀疏表示法 、光源正規化 、局部特徵 |
外文關鍵詞: | Sparse Representation, Illumination Normalization, Component Features |
相關次數: | 點閱:225 下載:3 |
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本論文首次應用光源正規化(Illumination Normalization)及局部特徵(Component Features)改進稀疏表示法(Sparse Representation) 之人臉辨識,並稱所提出的方法為INCO(Illumination-Normalized and Component-Oriented)稀疏表示法。不同於目前的稀疏表示法藉由多樣性的訓練樣本建立所需的線性基底,INCO 稀疏表示法先將訓練樣本進行光源正規化,再透過局部特徵的擷取,增強線性基底對於變化光源的穩健度。為結合局部(Component)與全域(Holistic)特徵,本研究提出了兩層式(Bilayer)和晶格式切割(Dense-on-Features)的結合方式並評估其效益,也比較了多種光源正規化的機制,不同的局部區塊,不同的影像特徵與特徵抽取之相關參數,結論出INCO稀疏表法之最佳系統架構與參數設置。透過不同標準資料庫(FERET、FRGC、Multi-PIE)與目前較佳之人臉辨識方法進行效能評比,本研究證實所提出之方法具有高度競爭力。
We merge illumination normalization and component features into the framework of
Sparse Representation-based Classification (SRC) for face recognition across illumination, and name it Illumination-Normalized and Component-Oriented (INCO) SRC. Unlike most SRC-based face recognition which constructs a dictionary from a training set with sufficient illumination variation, the proposed method first adopts a dictionary with illumination normalized training set and then extract the component features. For further improving the performance, we propose two combination schemes, Bilayer and Dense-on-Features, to combine component feature with holistic feature. We also compare different illumination normalizations, local region, and feature extraction to obtain the optimal setting to construct the framework of INCO-SRC. Experiments on FERET, FRGC and Multi-PIE databases show that the performance of the proposed method can be competitive to the state of the art.
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