研究生: |
劉宇倫 Yu-Lun Liu |
---|---|
論文名稱: |
結合人臉區塊的色彩和運動分析之脈搏量測 Color and Motion Analysis of Facial Component for Pulse Detection |
指導教授: |
徐繼聖
Gee-Sern Hsu |
口試委員: |
洪一平
Yi-Ping Hung 李百祺 Pai-Chi Li 莊仁輝 Jen-Hui Chuang 鍾國亮 Kuo-Liang Chung 鍾聖倫 Sheng-Luen Chung |
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: | 2014 |
畢業學年度: | 102 |
語文別: | 中文 |
論文頁數: | 46 |
中文關鍵詞: | 光體積變化信號 、主成分分析 、獨立成分分析 、非接觸式 、心率量測 |
外文關鍵詞: | PPG (Photoplethysmography), Principal component analysis (PCA), Independent Components Analysis (ICA), Non-contact, Pulse detection |
相關次數: | 點閱:326 下載:7 |
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使用消費型攝影機進行心率偵測的方法多是以人體的顏色或運動作為分析依據。當使用顏色為分析依據 (Color-Based) 時,透過對臉部區域取像素平均值進行頻域濾波,以提取最大能量之頻率作為心率值。而使用運動作為分析依據 (Motion-Based) 時,則是擷取並追蹤心臟跳動週期造成的頭部微小擺動軌跡,並由該軌跡訊號識別出與心跳對應的頻率成分。兩種方法皆有其侷限性,如 color-based 方法需要在臉部皮膚區域可被攝影機擷取的情況下才可適用, motion-based 方法則是對與心率無關的頭部運動較為敏感。我們將二者結合起來,以充分利用這些限制。我們進一步將臉部拆解為一些局部區塊,並比較不同的色彩空間以找出對於光源變化最具強健性的局部區塊及色彩通道,最後呈現出最可靠的心率量測結果。
The approaches for heartbeat detection using a consumer camera are based on either color or motion cues. When color is considered, the pixel values taken at facial region are averaged and temporally filtered to extract the frequency that corresponds to the maximal power. When motion is consider, the subtle head oscillation that accompanies cardiac cycles is captured and tracked, and from which the frequency components correspondent to heartbeats are identified. Both have limitations; for example, the color-based requires facial skin visible to the camera and the motion-based is sensitive to head motions irrelevant to cardiac cycles. We combine the two to leverage these limitations. We further decompose the face into component regions and compare different color spaces to identify the component region and color channel that is robust to illumination variation and renders the most reliable heartbeat measurement.
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