Deep learning architectures such as convolutional neural networks are the standard in computer vision for image processing tasks. Their accuracy however often comes at the cost of long and computationally expensive training, the need for large annotated datasets, and extensive hyper-parameter searches. On the other hand, a different method known as convolutional extreme learning machine has shown the potential to perform equally with a dramatic decrease in training time. Space imagery, especially about small bodies, could be well suited for this method. In this work, convolutional extreme learning machine architectures are designed and tested against their deep-learning counterparts. Because of the relatively fast training time of the former, convolutional extreme learning machine architectures enable efficient exploration of the architecture design space, which would have been impractical with the latter, introducing a methodology for an efficient design of a neural network architecture for computer vision tasks. Also, the coupling between the image processing method and labeling strategy is investigated and demonstrated to play a major role when considering vision-based navigation around small bodies.
翻译:深层学习结构,如进化神经网络,是图像处理任务的计算机视觉标准。但是,其准确性往往以长期和计算成本昂贵的培训、大型附加说明数据集的需求和广泛的超参数搜索为代价。另一方面,被称为进化极端学习机器的不同方法表明,随着培训时间的急剧减少,可以同样地发挥作用。空间图像,尤其是关于小身体的图像,非常适合这种方法。在这项工作中,进化极端学习机器结构的设计与测试要与深层学习的对等机构进行。由于前者的快速培训时间相对较快,进化极端学习机器结构使得能够高效地探索建筑设计空间,而后者则不切实际,为计算机视觉任务引入了高效设计神经网络结构的方法。此外,在考虑小身体的视觉导航时,图像处理方法与标签战略之间的交错会受到调查和证明具有重要作用。