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This file gives documentation for the cars 196 dataset. |
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(http://ai.stanford.edu/~jkrause/cars/car_dataset.html) |
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Metadata/Annotations |
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Descriptions of the files are as follows: |
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-cars_meta.mat: |
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Contains a cell array of class names, one for each class. |
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-cars_train_annos.mat: |
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Contains the variable 'annotations', which is a struct array of length |
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num_images and where each element has the fields: |
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bbox_x1: Min x-value of the bounding box, in pixels |
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bbox_x2: Max x-value of the bounding box, in pixels |
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bbox_y1: Min y-value of the bounding box, in pixels |
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bbox_y2: Max y-value of the bounding box, in pixels |
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class: Integral id of the class the image belongs to. |
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fname: Filename of the image within the folder of images. |
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-cars_test_annos.mat: |
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Same format as 'cars_train_annos.mat', except the class is not provided. |
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Submission file format |
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Files for submission should be .txt files with the class prediction for |
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image M on line M. Note that image M corresponds to the Mth annotation in |
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the provided annotation file. An example of a file in this format is |
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train_perfect_preds.txt |
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Included in the devkit are a script for evaluating training accuracy, |
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eval_train.m. Usage is: |
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(in MATLAB) |
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>> [accuracy, confusion_matrix] = eval_train('train_perfect_preds.txt') |
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If your training predictions work with this function then your testing |
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predictions should be good to go for the evaluation server, assuming |
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that they're in the same format as your training predictions. |
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