These labels were automatically added by AI and may be inaccurate. For details, see About Literature Database.
Abstract
This paper aims to shed light on the ethical problems of creating and
deploying computer vision tech, particularly in using publicly available
datasets. Due to the rapid growth of machine learning and artificial
intelligence, computer vision has become a vital tool in many industries,
including medical care, security systems, and trade. However, extensive use of
visual data that is often collected without consent due to an informed
discussion of its ramifications raises significant concerns about privacy and
bias. The paper also examines these issues by analyzing popular datasets such
as COCO, LFW, ImageNet, CelebA, PASCAL VOC, etc., that are usually used for
training computer vision models. We offer a comprehensive ethical framework
that addresses these challenges regarding the protection of individual rights,
minimization of bias as well as openness and responsibility. We aim to
encourage AI development that will take into account societal values as well as
ethical standards to avoid any public harm.