+ Speed Up Texture Classification in Clothing Retrieval System 電機三 吳瑋凌.

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Presentation transcript:

+ Speed Up Texture Classification in Clothing Retrieval System 電機三 吳瑋凌

+ What is clothing retrieval system? When a clothing image comes, we’d like to find the same pictures or the similar ones.

+ What’s the data in images? HOG LBP Color Histogram Color Moment Skin

+ Motivation Large scale computing efficiency => want to find a way to speed up the system

+ Method Find some conditions to classify images Only need to compute features with those in the same class

+ Experiment Use HOG to classify different textures Define 5 groups and use 25 training pictures for each

+ HOG(Histogram of oriented gradients ) Detect the edge of items Judge clothing texture 3*3*9=81 dimensions z cell block

+ How to find conditions threshold Find a threshold making the precision high enough after splitting

+ How to find conditions Don’t define threshold Threshold=(max1+min2)/2

+ Experiment One dimension  at most 10 threshold values Find the one having the max precision in all dimensions Set Paim <threshold>threshold

+ Classtree Paim=0.7

+ Results 5 pictures for each group(total=25 pictures) Calculate precision and recall for each group

+ Discussion The relationship of P,R and Paim The higher Paim, the higher P and R Paim

+ Discussion Use F1 to evaluate F1=2*P*R/(P+R) Paim

+ Discussion The relationship of training time and Paim The higher Paim, the longer training time

+ Conclusion We can find some more important entry to classify some groups Then we can only compute features of query image with those in the same groups

+ Thanks for your listening :)