Naturalistic Scene Modelling: Deep Learning with Insights from Biology

被引:1
|
作者
Appiah, Kofi [1 ]
Jin, Zhiyong [2 ,3 ]
Shi, Lei [4 ]
Kwok, Sze Chai [2 ,3 ,5 ]
机构
[1] Univ York, Dept Comp Sci, Deramore Lane, York YO10 5GH, Yorks, England
[2] Duke Kunshan Univ, Duke Inst Brain Sci, Data Sci Res Ctr, Div Nat & Appl Sci,Phylo Cognit Lab, Kunshan 215316, Jiangsu, Peoples R China
[3] East China Normal Univ, Affiliated Mental Hlth Ctr ECNU, Key Lab Brain Funct Genom, Shanghai Key Lab Brain Funct Genom,Sch Psychol & C, Shanghai, Peoples R China
[4] China Med Univ, Peoples Hosp Kunshan 1, Dept Neurosurg, Suzhou 215300, Jiangsu, Peoples R China
[5] Shanghai Changning Mental Hlth Ctr, Shanghai, Peoples R China
关键词
Scene understanding; Machine learning; Deep learning; Physiologically inspired models; NEURAL-NETWORKS; SEMANTIC SEGMENTATION; SYSTEM; ARCHITECTURE;
D O I
10.1007/s11265-023-01894-4
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Advances in machine learning coupled with the abundances of training data has facilitated the deep learning era, which has demonstrated its ability and effectiveness in solving complex detection and recognition problems. In general application areas with elements of machine learning have seen exponential growth with promising new and sophisticated solutions to complex learning problems. In computer vision, the challenge related to the detection of known objects in a scene is a thing of the past. With the tremendous increase in detection accuracies, some close to that of human detection, there are several areas still lagging in computer vision and machine learning where improvements may call for more architectural designs. In this paper, we propose a physiologically inspired model for scene understanding that encodes three key components: object location, size and category. Our aim is to develop an energy efficient artificial intelligent model for naturalistic scene understanding capable of deploying on a low power neuromorphic hardware. We have reviewed recent advances in deep learning architecture that have taken inspiration from human or primate learning systems and provided direct to future advancement on deep learning with inspiration from physiological experiments. Upon a review of areas that have benefitted from deep learning, we provide recommendations for enhancing those areas that might have stalled or grinded to a halt with little or no significant improvement.
引用
收藏
页码:1153 / 1165
页数:13
相关论文
共 50 条
  • [31] Deep Learning for the Identification of Decision Modelling Components from Text
    Goossens, Alexandre
    Claessens, Michelle
    Parthoens, Charlotte
    Vanthienen, Jan
    RULES AND REASONING, RULEML+RR 2021, 2021, 12851 : 158 - 171
  • [32] Validity and reliability of naturalistic driving scene categorization Judgments from crowdsourcing
    Cabrall, Christopher D. D.
    Lu, Zhenji
    Kyriakidis, Miltos
    Manca, Laura
    Dijksterhuis, Chris
    Happee, Riender
    de Winter, Joost
    ACCIDENT ANALYSIS AND PREVENTION, 2018, 114 : 25 - 33
  • [33] Scene Mover: Automatic Move Planning for Scene Arrangement by Deep Reinforcement Learning
    Wang, Hanqing
    Liang, Wei
    Yu, Lap-Fai
    ACM TRANSACTIONS ON GRAPHICS, 2020, 39 (06):
  • [34] Computing the Uncontrollable: Insights from Computational Modelling of Learning and Choice in Depression
    Henry W. Chase
    Current Behavioral Neuroscience Reports, 2021, 8 : 28 - 37
  • [35] Computing the Uncontrollable: Insights from Computational Modelling of Learning and Choice in Depression
    Chase, Henry W.
    CURRENT BEHAVIORAL NEUROSCIENCE REPORTS, 2021, 8 (02) : 28 - 37
  • [36] Fracture development around deep underground excavations: Insights from FDEM modelling
    Lisjak, Andrea
    Figi, Daniel
    Grasselli, Giovanni
    JOURNAL OF ROCK MECHANICS AND GEOTECHNICAL ENGINEERING, 2014, 6 (06) : 493 - 505
  • [37] Deep learning for deep earthquakes: insights from OBS observations of the Tonga subduction zone
    Xi, Ziyi
    Wei, S. Shawn
    Zhu, Weiqiang
    Beroza, Gregory C.
    Jie, Yaqi
    Saloor, Nooshin
    GEOPHYSICAL JOURNAL INTERNATIONAL, 2024, 238 (02) : 1073 - 1088
  • [38] Fracture development around deep underground excavations: Insights from FDEM modelling
    Andrea Lisjak
    Daniel Figi
    Giovanni Grasselli
    Journal of Rock Mechanics and Geotechnical Engineering, 2014, 6 (06) : 493 - 505
  • [39] Editorial: Learning a non-native language in a naturalistic environment: insights from behavioral and neuroimaging research
    Pliatsikas, Christos
    Chondrogianni, Vicky
    FRONTIERS IN PSYCHOLOGY, 2015, 6
  • [40] Deep Learning Based Application for Indoor Scene Recognition
    Mouna Afif
    Riadh Ayachi
    Yahia Said
    Mohamed Atri
    Neural Processing Letters, 2020, 51 : 2827 - 2837