Literature DB >> 33424960

Intelligence Is beyond Learning: A Context-Aware Artificial Intelligent System for Video Understanding.

Ahmed Ghozia1, Gamal Attiya1, Emad Adly1, Nawal El-Fishawy1.   

Abstract

Understanding video files is a challenging task. While the current video understanding techniques rely on deep learning, the obtained results suffer from a lack of real trustful meaning. Deep learning recognizes patterns from big data, leading to deep feature abstraction, not deep understanding. Deep learning tries to understand multimedia production by analyzing its content. We cannot understand the semantics of a multimedia file by analyzing its content only. Events occurring in a scene earn their meanings from the context containing them. A screaming kid could be scared of a threat or surprised by a lovely gift or just playing in the backyard. Artificial intelligence is a heterogeneous process that goes beyond learning. In this article, we discuss the heterogeneity of AI as a process that includes innate knowledge, approximations, and context awareness. We present a context-aware video understanding technique that makes the machine intelligent enough to understand the message behind the video stream. The main purpose is to understand the video stream by extracting real meaningful concepts, emotions, temporal data, and spatial data from the video context. The diffusion of heterogeneous data patterns from the video context leads to accurate decision-making about the video message and outperforms systems that rely on deep learning. Objective and subjective comparisons prove the accuracy of the concepts extracted by the proposed context-aware technique in comparison with the current deep learning video understanding techniques. Both systems are compared in terms of retrieval time, computing time, data size consumption, and complexity analysis. Comparisons show a significant efficient resource usage of the proposed context-aware system, which makes it a suitable solution for real-time scenarios. Moreover, we discuss the pros and cons of deep learning architectures.
Copyright © 2020 Ahmed Ghozia et al.

Entities:  

Mesh:

Year:  2020        PMID: 33424960      PMCID: PMC7775170          DOI: 10.1155/2020/8813089

Source DB:  PubMed          Journal:  Comput Intell Neurosci


  13 in total

1.  The perceptron: a probabilistic model for information storage and organization in the brain.

Authors:  F ROSENBLATT
Journal:  Psychol Rev       Date:  1958-11       Impact factor: 8.934

2.  Mastering the game of Go with deep neural networks and tree search.

Authors:  David Silver; Aja Huang; Chris J Maddison; Arthur Guez; Laurent Sifre; George van den Driessche; Julian Schrittwieser; Ioannis Antonoglou; Veda Panneershelvam; Marc Lanctot; Sander Dieleman; Dominik Grewe; John Nham; Nal Kalchbrenner; Ilya Sutskever; Timothy Lillicrap; Madeleine Leach; Koray Kavukcuoglu; Thore Graepel; Demis Hassabis
Journal:  Nature       Date:  2016-01-28       Impact factor: 49.962

3.  Moments in Time Dataset: One Million Videos for Event Understanding.

Authors:  Mathew Monfort; Alex Andonian; Bolei Zhou; Kandan Ramakrishnan; Sarah Adel Bargal; Tom Yan; Lisa Brown; Quanfu Fan; Dan Gutfreund; Carl Vondrick; Aude Oliva
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2019-02-25       Impact factor: 6.226

Review 4.  Deep learning and process understanding for data-driven Earth system science.

Authors:  Markus Reichstein; Gustau Camps-Valls; Bjorn Stevens; Martin Jung; Joachim Denzler; Nuno Carvalhais
Journal:  Nature       Date:  2019-02-13       Impact factor: 49.962

Review 5.  Deep learning for healthcare: review, opportunities and challenges.

Authors:  Riccardo Miotto; Fei Wang; Shuang Wang; Xiaoqian Jiang; Joel T Dudley
Journal:  Brief Bioinform       Date:  2018-11-27       Impact factor: 11.622

6.  Big data. The parable of Google Flu: traps in big data analysis.

Authors:  David Lazer; Ryan Kennedy; Gary King; Alessandro Vespignani
Journal:  Science       Date:  2014-03-14       Impact factor: 47.728

7.  Building machines that learn and think like people.

Authors:  Brenden M Lake; Tomer D Ullman; Joshua B Tenenbaum; Samuel J Gershman
Journal:  Behav Brain Sci       Date:  2016-11-24       Impact factor: 12.579

8.  Toward a modern theory of adaptive networks: expectation and prediction.

Authors:  R S Sutton; A G Barto
Journal:  Psychol Rev       Date:  1981-03       Impact factor: 8.934

9.  Scalable training of artificial neural networks with adaptive sparse connectivity inspired by network science.

Authors:  Decebal Constantin Mocanu; Elena Mocanu; Peter Stone; Phuong H Nguyen; Madeleine Gibescu; Antonio Liotta
Journal:  Nat Commun       Date:  2018-06-19       Impact factor: 14.919

10.  Improving machine learning reproducibility in genetic association studies with proportional instance cross validation (PICV).

Authors:  Elizabeth R Piette; Jason H Moore
Journal:  BioData Min       Date:  2018-04-19       Impact factor: 2.522

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.