基于拓扑学习的矢量量化图像新颖性检测

Yann Bernard, N. Hueber, B. Girau
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引用次数: 0

摘要

新颖性检测是生物视觉系统的重要组成部分,它的作用是从视觉环境中存在的大量信息中提取出智能体生存的关键要素。目前基于视觉的嵌入式系统,如监控摄像头,也面临着类似的挑战,因为它们必须处理大量的感官数据,而可用的计算能力和内存带宽有限。为了在这些系统中进行人工新颖性检测,需要有一个能够在没有任何先验知识的情况下学习局部视觉环境的模型。这项研究探索了生物启发的无监督神经网络模型,更精确地说,是这项任务的良好候选者。我们提出了一种新颖的方法,包括基于矢量量化和拓扑学习的新颖性检测,
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novelty Detection in Images Using Vector Quantization with Topological Learning
Novelty detection is a key component of biological vision systems, where its role is to extract critical elements for the agents survival from the massive amount of information present in his visual environment. Current vision based embedded systems, such as surveillance cameras, are facing similar challenges as they have to handle a significant amount of sensory data, with limited computing power and memory bandwidth available. In order to perform artificial novelty detection in these systems, it is necessary to have a model able to learn the local visual environment without having any prior knowledge. This study explores bio-inspired unsupervised neural networks models, more precisely self-organizing maps, which are good candidates for this task. We present an original approach consisting of performing novelty detection based on vector quantization and topological learning,
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