TL;DR
This paper proposes an artificial immune system approach to enhance the security of face recognition systems against adversarial attacks, aiming to improve robustness and reliability in biometric security.
Contribution
It introduces a novel artificial immune system framework specifically designed for securing face recognition against adversarial threats, a previously underexplored area.
Findings
Improved detection of adversarial attacks on face recognition systems.
Enhanced robustness of face recognition models against adversarial perturbations.
Demonstrated effectiveness through experimental validation.
Abstract
Insect production for food and feed presents a promising supplement to ensure food safety and address the adverse impacts of agriculture on climate and environment in the future. However, optimisation is required for insect production to realise its full potential. This can be by targeted improvement of traits of interest through selective breeding, an approach which has so far been underexplored and underutilised in insect farming. Here we present a comprehensive review of the selective breeding framework in the context of insect production. We systematically evaluate adjustments of selective breeding techniques to the realm of insects and highlight the essential components integral to the breeding process. The discussion covers every step of a conventional breeding scheme, such as formulation of breeding objectives, phenotyping, estimation of genetic parameters and breeding values,…
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