Warning: fastdup create() without work_dir argument, output is stored in a folder named work_dir in your current working path.
FastDup Software, (C) copyright 2022 Dr. Amir Alush and Dr. Danny Bickson.
2023-09-14 16:39:55 [INFO] Going to loop over dir coco_minitrain_25k
2023-09-14 16:39:55 [INFO] Found total 1000 images to run on, 1000 train, 0 test, name list 1000, counter 1000
2023-09-14 16:39:57 [INFO] Found total 1000 images to run ontimated: 0 Minutes
2023-09-14 16:39:57 [INFO] 97) Finished write_index() NN model
2023-09-14 16:39:57 [INFO] Stored nn model index file work_dir/nnf.index
2023-09-14 16:39:57 [INFO] Total time took 2157 ms
2023-09-14 16:39:57 [INFO] Found a total of 0 fully identical images (d>0.990), which are 0.00 % of total graph edges
2023-09-14 16:39:57 [INFO] Found a total of 0 nearly identical images(d>0.980), which are 0.00 % of total graph edges
2023-09-14 16:39:57 [INFO] Found a total of 0 above threshold images (d>0.900), which are 0.00 % of total graph edges
2023-09-14 16:39:57 [INFO] Found a total of 100 outlier images (d<0.050), which are 5.00 % of total graph edges
2023-09-14 16:39:57 [INFO] Min distance found 0.513 max distance 0.894
2023-09-14 16:39:57 [INFO] Running connected components for ccthreshold 0.900000
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Dataset Analysis Summary:
Dataset contains 1000 images
Valid images are 100.00% (1,000) of the data, invalid are 0.00% (0) of the data
Components: failed to find images clustered into components, try to run with lower cc_threshold.
Outliers: 7.10% (71) of images are possible outliers, and fall in the bottom 5.00% of similarity values.
For a detailed list of outliers, use `.outliers()`.
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