Autonomous Indoor Robot Navigation via Siamese Deep Convolutional Neural Network

Yao Yeboah, Cai Yanguang, W. Wu, Shuai He
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引用次数: 4

Abstract

The vast majority of indoor navigation algorithms either rely on manual scene augmentation and labelling or exploit multi-sensor fusion techniques in achieving simultaneous localization and mapping (SLAM), leading to high computational costs, hardware complexities and robustness deficiencies. This paper proposes an efficient and robust deep learning-based indoor navigation framework for robots. Firstly, we put forward an end-to-end trainable siamese deep convolutional neural network (DCNN) which decomposes navigation into orientation and localization in one branch, while achieving semantic scene mapping in another. In mitigating the computational costs associated with DCNNs, the proposed model design shares a significant amount of convolutional operations between the two branches, streamlining the model and optimizing for efficiency in terms of memory and inference latency. Secondly, a transfer learning regime is explored in demonstrating how such siamese DCNNs can be efficiently trained for high convergence rates without extensive manual dataset labelling. The resulting siamese framework combines semantic scene understanding with orientation estimation towards predicting collision-free and optimal navigation paths. Experimental results demonstrate that the proposed framework achieves accurate and efficient navigation and outperforms existing "navigation-by-classification" variants.
基于Siamese深度卷积神经网络的自主室内机器人导航
绝大多数室内导航算法要么依赖于手动场景增强和标记,要么利用多传感器融合技术来实现同时定位和绘图(SLAM),导致高计算成本、硬件复杂性和鲁棒性不足。提出了一种高效、鲁棒的基于深度学习的机器人室内导航框架。首先,我们提出了一种端到端可训练的siamese深度卷积神经网络(DCNN),该网络在一个分支上将导航分解为方向和定位,在另一个分支上实现语义场景映射。为了降低与DCNNs相关的计算成本,所提出的模型设计在两个分支之间共享了大量的卷积操作,简化了模型,并在内存和推理延迟方面优化了效率。其次,探讨了一种迁移学习机制,以展示如何在不需要大量手动数据集标记的情况下有效地训练这种连体DCNNs以获得高收敛率。生成的siamese框架结合了语义场景理解和方向估计,以预测无碰撞和最优导航路径。实验结果表明,该框架实现了准确、高效的导航,优于现有的“分类导航”方法。
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