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Preprocessing Pipelines including Block-Matching Convolutional Neural Network for Image Denoising to Robustify Deep

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  • 1ITTI Sp. z o.o., 61-612 Poznań, Poland.

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Summary
This summary is machine-generated.

This study evaluates preprocessing defenses against adversarial attacks on artificial neural networks used in security reidentification. These defenses, like image denoising, protect systems without costly retraining, showing promising results in realistic scenarios.

Keywords:
adversarial attacksadversarial defencescomputer visiondeep learning

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Area of Science:

  • Computer Vision
  • Artificial Intelligence
  • Cybersecurity

Background:

  • Artificial neural networks (ANNs) are crucial for computer vision, including security applications like reidentification.
  • ANNs are vulnerable to adversarial attacks, posing risks to surveillance systems.
  • Retraining classifiers to counter attacks is computationally expensive.

Purpose of the Study:

  • To evaluate the effectiveness of preprocessing defenses against adversarial attacks in computer vision.
  • To assess the viability of using image denoising techniques as a defense mechanism.
  • To explore defenses that avoid computationally intensive classifier retraining.

Main Methods:

  • Tested various preprocessing pipelines against adversarial attacks on a pre-trained neural network.
  • Utilized transfer learning to adapt a general architecture for a specific reidentification task.
  • Included block-matching convolutional neural network for image denoising as a specific defense.

Main Results:

  • Preprocessing defenses demonstrated promising results in mitigating adversarial attacks.
  • Image denoising proved effective as an adversarial defense strategy.
  • The approach successfully protected a reidentification system in a realistic setting.

Conclusions:

  • Preprocessing defenses offer a viable and efficient method to enhance the security of artificial neural networks against adversarial attacks.
  • These defenses circumvent the need for expensive classifier retraining.
  • The findings support the integration of preprocessing techniques into surveillance pipelines for improved robustness.