WEEK 7 Amari Lewis Aidean Sharghi Amari Lewis Aidean Sharghi.

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Presentation transcript:

WEEK 7 Amari Lewis Aidean Sharghi Amari Lewis Aidean Sharghi

Dataset from Switzerland This is the dataset form Switzerland, they are still working on their project. They are studying the buildings across their campus using light field images 54 categories & a range between 4-29 videos in each subfolder for each category.

challenge  The dataset was not pictures but, Videos  First time working with videos  Trying to implement our same method as we did with light field images  The dataset was not pictures but, Videos  First time working with videos  Trying to implement our same method as we did with light field images

Show video- BP

Extract the frames from each video Implemented a code which extracted and saved 300 frames in each video (.mov)

Frame 1/300 Frame 257/300

EPI Save 720 EPI lines because we are saving each line separately due to forming one epi image being too huge. Each EPI is from 300 different images.

goal  Main goal: To achieve higher accuracy than our previous attempt of 74% On regular.jpg images accuracy of 78%  Main goal: To achieve higher accuracy than our previous attempt of 74% On regular.jpg images accuracy of 78%

 Thank you !