论文标题
图像处理和机器视觉的神经形态方法
A neuromorphic approach to image processing and machine vision
论文作者
论文摘要
神经形态工程本质上是人造系统的开发,例如采用生物神经系统中发现的信息表示的电子模拟电路。尽管比人脑更快,更准确,但计算机却落后于识别能力。但是,可以预见的是,与计算机视觉和图像处理领域有关的神经形态的进步将在计算机可以解释和分析信息的方式上有了很大的改进。在本文中,我们探讨了视觉任务的实现,例如图像分割,视觉注意力和对象识别。此外,已经检查了各向异性扩散的概念,然后是采用新的方法来执行图像分割的新方法。此外,我们讨论了神经形态视觉传感器在人工视觉系统中的作用以及涉及的协议,以实现信号的异步传输。此外,还讨论了两种用于模拟对象识别过程和视觉关注过程的广泛接受的算法。在本文的整个跨度中,我们都强调了使用非易失性记忆设备(例如回忆录)来实现人造视觉系统的使用。最后,我们讨论了硬件加速器,并希望代表一个例子,即认为计算机视觉的进度可能会直接受益于非挥发性内存技术的进展。
Neuromorphic engineering is essentially the development of artificial systems, such as electronic analog circuits that employ information representations found in biological nervous systems. Despite being faster and more accurate than the human brain, computers lag behind in recognition capability. However, it is envisioned that the advancement in neuromorphics, pertaining to the fields of computer vision and image processing will provide a considerable improvement in the way computers can interpret and analyze information. In this paper, we explore the implementation of visual tasks such as image segmentation, visual attention and object recognition. Moreover, the concept of anisotropic diffusion has been examined followed by a novel approach employing memristors to execute image segmentation. Additionally, we have discussed the role of neuromorphic vision sensors in artificial visual systems and the protocol involved in order to enable asynchronous transmission of signals. Moreover, two widely accepted algorithms that are used to emulate the process of object recognition and visual attention have also been discussed. Throughout the span of this paper, we have emphasized on the employment of non-volatile memory devices such as memristors to realize artificial visual systems. Finally, we discuss about hardware accelerators and wish to represent a case in point for arguing that progress in computer vision may benefit directly from progress in non-volatile memory technology.