Multi-Angle Face Recognition based on Data Augmentation and It’s Application to Realtime Image Search

碩士 === 國立中興大學 === 資訊科學與工程學系所 === 107 === In the study, the situation of the police investigation case will be simulated. Suppose there is a suspect with only one face photo as a clue. I hope to get 10,000 images to identify the suspect and find the suspect through 10,000 monitors. The face features...

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Main Authors: Ching-Yu Wang, 王慶裕
Other Authors: Yao-Jhong Fan
Format: Others
Language:zh-TW
Published: 2018
Online Access:http://ndltd.ncl.edu.tw/handle/hrtsk4
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spelling ndltd-TW-107NCHU53940022019-05-16T01:44:47Z http://ndltd.ncl.edu.tw/handle/hrtsk4 Multi-Angle Face Recognition based on Data Augmentation and It’s Application to Realtime Image Search 基於資料增量之多角度臉部辨識系統及其於即時影像追蹤之應用 Ching-Yu Wang 王慶裕 碩士 國立中興大學 資訊科學與工程學系所 107 In the study, the situation of the police investigation case will be simulated. Suppose there is a suspect with only one face photo as a clue. I hope to get 10,000 images to identify the suspect and find the suspect through 10,000 monitors. The face features in the picture will be captured through MTCNN [1] and the suspect will be identified using FaceNet [2]. In the absence of suspected face photos, the face recognition method can only find the most similar photos by calculating the similarity distance by converting two photos into feature vectors. The suspect can be judged with an accuracy of 87% in 200 experiments. Under the 2000 experiment, the accuracy is 79.2%. When the photo is increased to 10,000, the accuracy drops to 45.1%. In this paper, 2D photo 3D face modeling is implemented by PRNet [3], and the face images of each angle are incrementally generated through the 3D model, and the classifier is trained to increase the face recognition accuracy from 45.1% to 71.4%. Yao-Jhong Fan 范耀中 2018 學位論文 ; thesis 40 zh-TW
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language zh-TW
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description 碩士 === 國立中興大學 === 資訊科學與工程學系所 === 107 === In the study, the situation of the police investigation case will be simulated. Suppose there is a suspect with only one face photo as a clue. I hope to get 10,000 images to identify the suspect and find the suspect through 10,000 monitors. The face features in the picture will be captured through MTCNN [1] and the suspect will be identified using FaceNet [2]. In the absence of suspected face photos, the face recognition method can only find the most similar photos by calculating the similarity distance by converting two photos into feature vectors. The suspect can be judged with an accuracy of 87% in 200 experiments. Under the 2000 experiment, the accuracy is 79.2%. When the photo is increased to 10,000, the accuracy drops to 45.1%. In this paper, 2D photo 3D face modeling is implemented by PRNet [3], and the face images of each angle are incrementally generated through the 3D model, and the classifier is trained to increase the face recognition accuracy from 45.1% to 71.4%.
author2 Yao-Jhong Fan
author_facet Yao-Jhong Fan
Ching-Yu Wang
王慶裕
author Ching-Yu Wang
王慶裕
spellingShingle Ching-Yu Wang
王慶裕
Multi-Angle Face Recognition based on Data Augmentation and It’s Application to Realtime Image Search
author_sort Ching-Yu Wang
title Multi-Angle Face Recognition based on Data Augmentation and It’s Application to Realtime Image Search
title_short Multi-Angle Face Recognition based on Data Augmentation and It’s Application to Realtime Image Search
title_full Multi-Angle Face Recognition based on Data Augmentation and It’s Application to Realtime Image Search
title_fullStr Multi-Angle Face Recognition based on Data Augmentation and It’s Application to Realtime Image Search
title_full_unstemmed Multi-Angle Face Recognition based on Data Augmentation and It’s Application to Realtime Image Search
title_sort multi-angle face recognition based on data augmentation and it’s application to realtime image search
publishDate 2018
url http://ndltd.ncl.edu.tw/handle/hrtsk4
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