Visual Feedback Control using CNN Based Architecture with Input Data Fusion

Adrian-Paul Botezatu, L. Ferariu, A. Burlacu, Teodor-Andrei Sauciuc
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引用次数: 1

Abstract

Visual servoing systems are designed to solve pose alignment problems by providing the necessary linear and angular velocities using data extracted from images. Among the difficulties encountered by the traditional visual servoing approaches, there are feature detection and tracking, camera calibration, scene complexity, and robotic system constraints. Part of these problems can be solved if Convolutional Neural Networks (CNNs) are added to a visual servoing architecture. The main advantage of CNNs is the capability of understanding both the overall structure and specific details of the images corresponding to the current and desired layouts. To take a step further the state-of-the-art architectures, in this paper, we show how extra input data can improve the visual servoing behaviour. The extra data result from maps of regions induced by the feature points' positions, without the necessity of employing tracking. The results obtained on relevant data sets show that the proposed input fusion-based CNN provides an improved approximation of the linear and angular visual servoing velocities.
基于CNN的视觉反馈控制与输入数据融合
视觉伺服系统的设计是通过使用从图像中提取的数据提供必要的线速度和角速度来解决姿势对齐问题。传统的视觉伺服方法所遇到的困难包括特征检测与跟踪、摄像机标定、场景复杂性和机器人系统约束等。如果将卷积神经网络(cnn)添加到视觉伺服体系结构中,这些问题可以部分解决。cnn的主要优点是能够理解与当前和期望布局相对应的图像的整体结构和特定细节。为了进一步发展最先进的体系结构,在本文中,我们展示了额外的输入数据如何改善视觉伺服行为。额外的数据是由特征点的位置引起的区域图,而不需要使用跟踪。在相关数据集上得到的结果表明,基于输入融合的CNN提供了一种改进的线性和角视觉伺服速度逼近。
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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