There is no royal road to computer vision

Bo Zhang
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Abstract

To endow computers with human visual capability is one of the main goals of artificial intelligence (AI) although there still is a long way to go. Taking object recognition as an example in 1980s, a main approach addressing the problem is the 3D reconstruction one, i.e., the reconstruction of 3D object from 2D images. In 1990s since the 3D reconstruction method was confronted with extreme difficulty, most researchers abandoned the attempts and turned to the 2D based approach, i.e., object recognition from 2D images directly. However, the new road is still uneven. In this talk, I will address the main principles of the new approach, its seedtime and the difficulty faced recently. When a huge amount of 2D-image data are obtained by digital cameras in object recognition (or classification), they should be transformed into an object invariant representation. In order to solve the problem, we need two key techniques, i.e., a robust detector and an object invariant describer. A number of great efforts have been made on these techniques, but so far few efficient solutions have been found. A new direction emerged to solve the problems of computer vision is that computer science may learn some things from neuron science or brain science. This talk will discuss what computer vision can learn from human visual principles and how it will be affected by the new interdisciplinary research on computer vision.
计算机视觉没有捷径可走
赋予计算机人类的视觉能力是人工智能(AI)的主要目标之一,尽管还有很长的路要走。以20世纪80年代的物体识别为例,解决该问题的主要方法是三维重建方法,即从二维图像中重建三维物体。20世纪90年代,由于三维重建方法面临极大的困难,大多数研究人员放弃了尝试,转向基于二维的方法,即直接从二维图像中识别物体。然而,这条新路仍然崎岖不平。在这次演讲中,我将讨论新方法的主要原则,它的萌芽时间和最近面临的困难。当数码相机在物体识别(或分类)中获得大量的二维图像数据时,需要将其转化为物体不变表示。为了解决这个问题,我们需要两个关键技术,即鲁棒检测器和对象不变描述符。在这些技术上已经做出了许多巨大的努力,但迄今为止还没有找到有效的解决方案。解决计算机视觉问题的一个新方向是,计算机科学可以从神经元科学或脑科学中学习一些东西。本讲座将讨论计算机视觉可以从人类视觉原理中学到什么,以及计算机视觉新的跨学科研究将如何影响计算机视觉。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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