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Online Learning for Robot Vision

机译:机器人视觉在线学习

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摘要

In tele-operated robotics applications, the primary information channel from the robot to its human operator is a video stream. For autonomous robotic systems however, a much larger selection of sensors is employed, although the most relevant information for the operation of the robot is still available in a single video stream. The issue lies in autonomously interpreting the visual data and extracting the relevant information, something humans and animals perform strikingly well. On the other hand, humans have great diculty expressing what they are actually looking for on a low level, suitable for direct implementation on a machine. For instance objects tend to be already detected when the visual information reaches the conscious mind, with almost no clues remaining regarding how the object was identied in the rst place. This became apparent already when Seymour Papert gathered a group of summer workers to solve the computer vision problem 48 years ago [35]. Articial learning systems can overcome this gap between the level of human visual reasoning and low-level machine vision processing. If a human teacher can provide examples of what to be extracted and if the learning system is able to extract the gist of these examples, the gap is bridged. There are however some special demands on a learning system for it to perform successfully in a visual context. First, low level visual input is often of high dimensionality such that the learning system needs to handle large inputs. Second, visual information is often ambiguous such that the learning system needs to be able to handle multi modal outputs, i.e. multiple hypotheses. Typically, the relations to be learned  are non-linear and there is an advantage if data can be processed at video rate, even after presenting many examples to the learning system. In general, there seems to be a lack of such methods. This thesis presents systems for learning perception-action mappings for robotic systems with visual input. A range of problems are discussed, such as vision based autonomous driving, inverse kinematics of a robotic manipulator and controlling a dynamical system. Operational systems demonstrating solutions to these problems are presented. Two dierent approaches for providing training data are explored, learning from demonstration (supervised learning) and explorative learning (self-supervised learning). A novel learning method fullling the stated demands is presented. The method, qHebb, is based on associative Hebbian learning on data in channel representation. Properties of the method are demonstrated on a vision-based autonomously driving vehicle, where the system learns to directly map low-level image features to control signals. After an initial training period, the system seamlessly continues autonomously. In a quantitative evaluation, the proposed online learning method performed comparably with state of the art batch learning methods.
机译:在远程操作机器人技术应用中,从机器人到操作员的主要信息通道是视频流。然而,对于自主机器人系统,虽然在单个视频流中仍可获得与机器人操作最相关的信息,但传感器的选择要多得多。问题在于自主地解释视觉数据并提取相关信息,这是人类和动物表现出色的表现。另一方面,人类非常有能力在低水平上表达他们实际想要的东西,适合直接在机器上实现。例如,当视觉信息到达有意识的头脑时,对象往往已经被检测到,几乎没有关于如何在第一位置识别对象的任何线索。当48年前西摩·帕尔特(Seymour Papert)聚集了一批暑期工来解决计算机视觉问题时,这一点就已经显而易见[35]。人工学习系统可以克服人类视觉推理和低级机器视觉处理之间的差距。如果人类老师可以提供要提取的内容的示例,并且学习系统能够提取这些示例的要旨,则可以缩小差距。但是,对于学习系统,要使其在视觉环境中成功运行,存在一些特殊要求。首先,低级视觉输入通常是高维度的,因此学习系统需要处理大量输入。第二,视觉信息常常是模棱两可的,使得学习系统需要能够处理多模态输出,即多个假设。通常,要学习的关系是非线性的,并且即使可以在向学习系统展示许多示例之后,如果可以以视频速率处理数据也存在优势。通常,似乎缺少这种方法。本文提出了一种用于学习具有视觉输入的机器人系统的感知-动作映射的系统。讨论了一系列问题,例如基于视觉的自动驾驶,机器人操纵器的逆运动学和控制动力系统。提出了证明这些问题的解决方案的操作系统。探索了两种提供训练数据的方法,即从示范学习(监督学习)和探索性学习(自我监督学习)。提出了一种满足所述要求的新颖学习方法。 qHebb方法基于对通道表示中的数据的关联Hebbian学习。该方法的特性在基于视觉的自动驾驶车辆上得到了证明,该系统在该系统上学会了直接将低级图像特征映射到控制信号。经过最初的培训后,系统将自动继续无缝运行。在定量评估中,所提出的在线学习方法与最新的批处理学习方法表现相当。

著录项

  • 作者

    Öfjäll, Kristoffer;

  • 作者单位
  • 年度 2014
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 入库时间 2022-08-20 20:22:47

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