Project 1 Mei-Chen Yeh 03/13/2012. Searching landmark photos Data (around 720 images) – 90 (18 * 5) folders, each has 8 images Chiang Kai-Shek Memorial.

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Presentation transcript:

Project 1 Mei-Chen Yeh 03/13/2012

Searching landmark photos Data (around 720 images) – 90 (18 * 5) folders, each has 8 images Chiang Kai-Shek Memorial Hall NTNU Gong-Guan campus Kiyomizu-dera in Kyoto Yeh Liu

?? National Palace Museum Marina Bay Sands in Singapore Hsing Tian Temple Uppsala Domkyrka

Task Search landmark photos Database Images (720) ……

Task Search landmark photos Database Images (720) …… A real-world situation 

Issues Image representation A similarity function (or distance function) of two images Indexing the database for efficient searches

Evaluation Bull’s eye test – For each image in the database, compare to every images (including the query image), and count the number of correct matches in top 16 – Accuracy = # correct matches / # possible hits (5,760 = 720*8 in this case) Search time

Presentation Scheduled on April 10, % of the overall grade, with the following evaluation components: – Technical depth – Novelty – Presentation minutes, in English

Make a work plan now! Start early No cheating Deliver a working system