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Title: | 利用半指導式機器學習方法與階層式分類器的自動圖片標記法 Automatic Image Annotation Using a Semi-Supervised and Hierarchical Approach |
Authors: | Ming-Wei Hung 洪銘蔚 |
Advisor: | 楊佳玲 |
Co-Advisor: | 洪一平 |
Keyword: | 影像標註,影像檢索,半指導式機器學習方法,階層式分類器,使用者反饋, Image annotation,Image retrieval,semi-supervised learning,hierarchical classifier,user feedback, |
Publication Year : | 2007 |
Degree: | 碩士 |
Abstract: | Retrieving images by textual queries requires some knowledge of the semantics of the image. Hence we need to find the label words that describe the content of the image and take them as the annotation of the image. Here, we propose an approach to annotate images with user feedback, and it annotates a label a time. The process contains a loop, and it will report a number of images which are most likely to be associated with the label word for user to annotate every iteration. The way to estimate the possibility that an image is associated with a label is using the known labeled images and some unlabeled images as training data to train a classifier for the label. While training the classifier, we use the semi-supervised learning method with unlabeled images to build hierarchical classifiers. The unlabeled images can help clustering while we only have a few labeled training images. After training the classifier, we take the unlabeled image as the input of the classifiers to estimate the confidence values representing the possibility that the image is associated with the label. After using the approach with every label words, we can get the annotation from all of the label words. |
URI: | http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/29270 |
Fulltext Rights: | 有償授權 |
Appears in Collections: | 資訊網路與多媒體研究所 |
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File | Size | Format | |
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ntu-96-1.pdf Restricted Access | 771.87 kB | Adobe PDF |
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