基于深度学习技术的面向多传感器融合的密集生物识别人机交互系统的完善

IF 1.2 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Haiju Li, Chuntang Zhang, Jingwen Bo, Zhongjun Ding
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引用次数: 0

摘要

对于复杂背景下特征模糊的密集小靶点生物,传统的目标检测方法效率和精度较低。面向多传感器融合的人机交互(HRI)系统为生物学家处理和分析数据提供了便利。为此,对几种基于卷积神经网络(CNN)的深度学习模型进行改进和比较,研究深海热液喷口中密集生物的种类和密度,并将其与位置传感器和电导率-温度-深度(CTD)传感器给出的相关环境信息融合,完善面向多传感器融合的HRI系统。首先,结合不同的元架构和不同的特征提取器,得到了5种基于CNN的目标识别算法;然后,他们比较了特征提取器的计算成本,并从平均检测速度、相关系数和平均类特异性置信度评分等方面权衡了每种算法的优缺点,确认Faster Region-based CNN (R-CNN)_InceptionNet是适用于热液喷口生物数据集的最佳算法。最后,他们计算了密集和稀疏区域的外眼小眼的认知准确率,分别为88.3%和95.9%,以分析Faster R-CNN_InceptionNet的性能。结果表明,该方法可用于多传感器融合的HRI系统中,用于复杂环境中密集生物的统计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep learning techniques-based perfection of multi-sensor fusion oriented human-robot interaction system for identification of dense organisms

Deep learning techniques-based perfection of multi-sensor fusion oriented human-robot interaction system for identification of dense organisms

For detection of dense small-target organisms with indistinct features in complex background, the efficiency and accuracy of traditional target detection methods are low. Multi-sensor fusion oriented human-robot interaction (HRI) system has facilitated biologists to process and analyse data. For this, several deep learning models based on convolutional neural network (CNN) are improved and compared to study the species and density of dense organisms in deep-sea hydrothermal vent, which are fused it with related environmental information given by position sensors and conductivity-temperature-depth (CTD) sensors, so as to perfect multi-sensor fusion oriented HRI system. Firstly, the authors combined different meta-architectures and different feature extractors, and obtained five object identification algorithms based on CNN. Then, they compared computational cost of feature extractors and weighed the pros and cons of each algorithm from mean detection speed, correlation coefficient and mean class-specific confidence score to confirm that Faster Region-based CNN (R-CNN)_InceptionNet is the best algorithm applicable to hydrothermal vent biological dataset. Finally, they calculated the cognitive accuracy of rimicaris exoculata in dense and sparse areas, which were 88.3% and 95.9% respectively, to analyse the performance of the Faster R-CNN_InceptionNet. Results show that the proposed method can be used in the multi-sensor fusion oriented HRI system for the statistics of dense organisms in complex environments.

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来源期刊
Cognitive Computation and Systems
Cognitive Computation and Systems Computer Science-Computer Science Applications
CiteScore
2.50
自引率
0.00%
发文量
39
审稿时长
10 weeks
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