计算机视觉社区面临的挑战

D. Morris, L. Joppa
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引用次数: 0

摘要

计算机视觉(CV)作为一种提高保护科学效率的工具正在迅速发展,例如,通过加速对来自相机陷阱和航空调查的图像的注释。然而,在CV成为一种广泛使用的方法之前,CV社区需要解决几个核心技术挑战。考虑到自深度学习出现以来在CV中取得了巨大进展的几个案例研究,本章将介绍CV中的核心概念,调查CV已经为保护做出贡献的几个领域,并概述CV社区面临的关键挑战,这些挑战将促进CV在主流保护实践中的采用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Challenges for the computer vision community
Computer vision (CV) is rapidly advancing as a tool to make conservation science more efficient, for example, by accelerating the annotation of images from camera traps and aerial surveys. However, before CV can become a widely used approach, several core technology challenges need to be addressed by the CV community. Taking into consideration several case studies in CV where tremendous progress has been made since the emergence of deep learning, this chapter will introduce core concepts in CV, survey several areas where CV is already contributing to conservation, and outline key challenges for the CV community that will facilitate the adoption of CV in mainstream conservation practice.
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