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Calculate the accuracy (for each reference image, if the 3-duplicates/near-duplicates are detected, the accuracy is 100%).Calculate the average time in seconds the method took to compare a pair of images.Get the 3-most similars for a reference image.Read the images of the Fruits360 dataset.This test proposes the best method in terms of speed and accuracy for the image duplicate finder system. Also, you can find all the tests in the Github repository. Note: I used a 2019 MacBook Pro CPU for all the tests. Experiment 2: Resilience to Image Transformation.I tested each method using both datasets in the following manner: Image 13 - A Sample of the SFBench dataset (image by author) Experiments
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