计算机视觉四大基本任务(分类、定位、检测、分割)
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重磅干货,第一时间送达
转载于:作者 | 张皓 来源 | 知乎(https://zhuanlan.zhihu.com/p/31727402)
引言:深度学习目前已成为发展最快、最令人兴奋的机器学习领域之一,许多卓有建树的论文已经发表,而且已有很多高质量的开源深度学习框架可供使用。然而,论文通常非常简明扼要并假设读者已对深度学习有相当的理解,这使得初学者经常卡在一些概念的理解上,读论文似懂非懂,十分吃力。另一方面,即使有了简单易用的深度学习框架,如果对深度学习常见概念和基本思路不了解,面对现实任务时不知道如何设计、诊断、及调试网络,最终仍会束手无策。
图像分类(image classification)
目标定位(object localization)
目标检测(object detection)
语义分割(semantic segmentation)
实例分割(instance segmentation)
参考文献
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