Adversarial Color Enhancement: Generating Unrestricted Adversarial Images by Optimizing a Color Filter

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Deep Learning ACE
Overview

ACE

Please find the preliminary version published at BMVC 2020 in the folder BMVC_version, and its extended journal version in Journal_version.

Dataset

The 1000 images of the ImageNet-Compatible dataset are provided in the folder dataset/images, along with their descriptions in dataset/images.csv, including their URLs, cropping bounding boxes, classification labels and some other metadata. More details on this dataset can be found in its official repository.

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Comments
  • Dataset download question

    Dataset download question

    Hi, buddy, this command: python download_images.py --input_file=*.csv --output_dir=OUTPUT_DIR, how did I correct download the *.csv files, in the "Run this official script to download the dataset."? Thank you.

    opened by ss24cs 2
Owner
PhD Candidate in CS
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