• 제목/요약/키워드: Video-based Learning

검색결과 677건 처리시간 0.022초

The effects of the online team project-based learning on problem solving ability, cooperative self efficacy and cooperative self regulation in students of department of physical therapy

  • Kim, Jung Hee;Lee, Woo Hyung
    • 대한물리치료과학회지
    • /
    • 제28권3호
    • /
    • pp.1-10
    • /
    • 2021
  • Background: The purpose of this study is to investigate the effect of the online team project based learning on problem-solving, cooperative self-efficacy, and cooperative self-regulation of college students. Design: Single group pre-post design. Methods: The online team project based learning was conducted for a total of 92 college students for 8 weeks. A survey was conducted on problem-solving ability, cooperative self-efficacy, and cooperative self-regulation. In the online team project-based class, two projects were performed. It consists of video lectures and real-time video conferencing. Through the real-time video conference, the project was carried out based on discussion among learners and feedback was provided. Results: There was a significant difference in the change in problem-solving ability compared to before learning (p<0.05). As a result of the evaluation of cooperative self-efficacy, there was a significant difference (p<0.05). There was a significant differences in cooperative self-regulation compared to before learning (p<0.05). Conclusion: The online team project-based learning are effective in improving learners' problem-solving ability, cooperative self-efficacy, and cooperative self-regulation.

Zero Deep Curve 추정방식을 이용한 저조도에 강인한 비디오 개선 방법 (Low-Light Invariant Video Enhancement Scheme Using Zero Reference Deep Curve Estimation)

  • 최형석;양윤기
    • 한국멀티미디어학회논문지
    • /
    • 제25권8호
    • /
    • pp.991-998
    • /
    • 2022
  • Recently, object recognition using image/video signals is rapidly spreading on autonomous driving and mobile phones. However, the actual input image/video signals are easily exposed to a poor illuminance environment. A recent researches for improving illumination enable to estimate and compensate the illumination parameters. In this study, we propose VE-DCE (video enhancement zero-reference deep curve estimation) to improve the illumination of low-light images. The proposed VE-DCE uses unsupervised learning-based zero-reference deep curve, which is one of the latest among learning based estimation techniques. Experimental results show that the proposed method can achieve the quality of low-light video as well as images compared to the previous method. In addition, it can reduce the computational complexity with respect to the existing method.

비디오 모니터링 환경에서 정확한 돼지 탐지 (Accurate Pig Detection for Video Monitoring Environment)

  • 안한세;손승욱;유승현;서유일;손준형;이세준;정용화;박대희
    • 한국멀티미디어학회논문지
    • /
    • 제24권7호
    • /
    • pp.890-902
    • /
    • 2021
  • Although the object detection accuracy with still images has been significantly improved with the advance of deep learning techniques, the object detection problem with video data remains as a challenging problem due to the real-time requirement and accuracy drop with occlusion. In this research, we propose a method in pig detection for video monitoring environment. First, we determine a motion, from a video data obtained from a tilted-down-view camera, based on the average size of each pig at each location with the training data, and extract key frames based on the motion information. For each key frame, we then apply YOLO, which is known to have a superior trade-off between accuracy and execution speed among many deep learning-based object detectors, in order to get pig's bounding boxes. Finally, we merge the bounding boxes between consecutive key frames in order to reduce false positive and negative cases. Based on the experiment results with a video data set obtained from a pig farm, we confirmed that the pigs could be detected with an accuracy of 97% at a processing speed of 37fps.

영상그래픽 직무에 따른 교과목운영의 사례분석 (Case Studies and Derivation of Course Profile in accordance with Video Graphics Job)

  • 박혜숙
    • 전기학회논문지P
    • /
    • 제66권3호
    • /
    • pp.135-138
    • /
    • 2017
  • This study analyzed with the case analysis of a series of processes from job analysis survey and results analysis, and academic achievement in order to transform the curriculum of existing courses of the NCS-based video broadcasting. Also this study analysed the existing curriculum and analyzed the trend of workforce trends and needs of the broadcasting content industry. Also through a needs analysis for the industry and alumni and students, video graphics, video editing and video directing were selected. In this paper it dealt mainly with respect to the video graphics in a dual job. Modeling capability into the unit through a job analysis, animation, effects and lighting were chosen accordingly based introduction of graphics and application of graphics were derived two courses and selected profiles and performance criteria. This training according to the NCS curriculum for students was evaluated based on the student's job was to investigate the learning ability.

머신러닝 기반의 영상 자동 편집 방법 및 시스템 (Video Automatic Editing Method and System based on Machine Learning)

  • 이승환;박대우
    • 한국정보통신학회:학술대회논문집
    • /
    • 한국정보통신학회 2022년도 춘계학술대회
    • /
    • pp.235-237
    • /
    • 2022
  • 영상 콘텐츠는, 길이에 따라 롱폼 영상 콘텐츠와 숏폼 영상 콘텐츠로 구분된다. 롱폼 영상 콘텐츠는 15분 이상 길이로 생성되며, 편집 없이 촬영 영상의 모든 프레임들이 포함되도록 한다. 숏폼 영상 콘텐츠는 1분이상 15분 이내로, 촬영 영상의 프레임들로부터 일부 프레임만 짧은 길이로 편집할 수 있다. 최근 1인 방송 시장의 성장으로 인하여, 시청자들을 늘리기 위한 숏폼 영상 콘텐츠에 대한 수요가 확대되고 있다. 따라서, 숏폼 영상 콘텐츠를 편집하여 생성하는 콘텐츠 편집 기술에 대한 연구가 필요하다. 본 연구는 영상, 음성, 동작을 포착하여 주요 장면의 숏폼 동영상을 생성하는 기술을 연구한다. 주요 장면의 숏폼 동영상은 머신 러닝을 통해 미리 학습된 하이라이트 추출 모델을 이용한다. 하이라이트 영상을 자동으로 생성하는 영상 자동 편집 시스템 및 방법은 숏폼 영상 콘텐츠의 핵심 기술이다. 머신러닝 기반의 영상 자동 편집 방법 및 시스템 연구는 1인 크리에이터들의 영상 편집에 투입되는 노력과 비용시간을 감소시켜, 경쟁력있는 콘텐츠 활동을 할 수 있도록 기여할 것이다.

  • PDF

Novel Intent based Dimension Reduction and Visual Features Semi-Supervised Learning for Automatic Visual Media Retrieval

  • kunisetti, Subramanyam;Ravichandran, Suban
    • International Journal of Computer Science & Network Security
    • /
    • 제22권6호
    • /
    • pp.230-240
    • /
    • 2022
  • Sharing of online videos via internet is an emerging and important concept in different types of applications like surveillance and video mobile search in different web related applications. So there is need to manage personalized web video retrieval system necessary to explore relevant videos and it helps to peoples who are searching for efficient video relates to specific big data content. To evaluate this process, attributes/features with reduction of dimensionality are computed from videos to explore discriminative aspects of scene in video based on shape, histogram, and texture, annotation of object, co-ordination, color and contour data. Dimensionality reduction is mainly depends on extraction of feature and selection of feature in multi labeled data retrieval from multimedia related data. Many of the researchers are implemented different techniques/approaches to reduce dimensionality based on visual features of video data. But all the techniques have disadvantages and advantages in reduction of dimensionality with advanced features in video retrieval. In this research, we present a Novel Intent based Dimension Reduction Semi-Supervised Learning Approach (NIDRSLA) that examine the reduction of dimensionality with explore exact and fast video retrieval based on different visual features. For dimensionality reduction, NIDRSLA learns the matrix of projection by increasing the dependence between enlarged data and projected space features. Proposed approach also addressed the aforementioned issue (i.e. Segmentation of video with frame selection using low level features and high level features) with efficient object annotation for video representation. Experiments performed on synthetic data set, it demonstrate the efficiency of proposed approach with traditional state-of-the-art video retrieval methodologies.

RGB 비디오 데이터를 이용한 Slowfast 모델 기반 이상 행동 인식 최적화 (Optimization of Action Recognition based on Slowfast Deep Learning Model using RGB Video Data)

  • 정재혁;김민석
    • 한국멀티미디어학회논문지
    • /
    • 제25권8호
    • /
    • pp.1049-1058
    • /
    • 2022
  • HAR(Human Action Recognition) such as anomaly and object detection has become a trend in research field(s) that focus on utilizing Artificial Intelligence (AI) methods to analyze patterns of human action in crime-ridden area(s), media services, and industrial facilities. Especially, in real-time system(s) using video streaming data, HAR has become a more important AI-based research field in application development and many different research fields using HAR have currently been developed and improved. In this paper, we propose and analyze a deep-learning-based HAR that provides more efficient scheme(s) using an intelligent AI models, such system can be applied to media services using RGB video streaming data usage without feature extraction pre-processing. For the method, we adopt Slowfast based on the Deep Neural Network(DNN) model under an open dataset(HMDB-51 or UCF101) for improvement in prediction accuracy.

A Contrastive Learning Framework for Weakly Supervised Video Anomaly Detection

  • Hyeon Jeong Park;Je Hyeong Hong
    • 한국방송∙미디어공학회:학술대회논문집
    • /
    • 한국방송∙미디어공학회 2022년도 추계학술대회
    • /
    • pp.171-174
    • /
    • 2022
  • Weakly-supervised learning is a widely adopted approach in video anomaly detection whereby only video labels are utilized instead of expensive frame-level annotations. Since the success of multi-instance learning (MIL), almost all recent approaches are based on maximizing the margin between the set of abnormal video snippets and those of normal video snippets. In this work, we present a simple contrastive approach for weakly supervised video anomaly detection (WS-VAD) with aims to enhance the performance of existing models. The method is generic in nature and introduces a loss function to encourage attraction of output features from the same video class and repel those from different video classes. Experimental results demonstrate our method can be applied to existing algorithms to improve detection accuracy in public video anomaly dataset.

  • PDF

동영상을 활용한 사전학습과 역할학습이 기본간호학 실습 교육에서 간호대학생의 자기조절학습에 미치는 효과에 대한 융합연구 (A Convergence Study about the Effects of Pre-learning and Role Learning Using Video on Self-regulated Learning of Nursing Students in Fundamental Nursing Practice Education)

  • 강숙
    • 한국융합학회논문지
    • /
    • 제9권5호
    • /
    • pp.247-256
    • /
    • 2018
  • 본 연구는 동영상을 활용한 사전학습과 역할학습이 간호대학생의 자기조절학습에 미치는 효과를 확인하고자 수행되었다. 연구설계는 비동등성 대조군 전후 설계에 의한 유사실험 연구이다. 연구대상은 G군 소재 간호학과 2학년 학생으로 실험군 84명, 대조군 76명으로 총 160명이었다. 자료수집 기간은 2016년 3월 2일부터 6월 20일까지였다. 실험군에게는 동영상을 활용한 사전학습과 역할학습을 진행하고 대조군에게는 교수시범의 전통적 방법을 진행한 후 자기조절학습의 변화를 측정하였다. 자료분석 방법은 ${\chi}^2-test$, independent t-test, ANCOVA를 사용하였다. 연구결과 자기조절학습의 인지적 구성 요소인 시연, 초인지에서, 동기적 구성요소인 자기효능감에서, 자원관리 구성요소인 도움구하기에서 유의한 차이가 나타났다. 본 연구는 간호학생들의 자기조절학습을 도모하고 효과적인 실습 교육을 운영하는데 기초자료를 제공하였다.

Deep Learning based Loss Recovery Mechanism for Video Streaming over Mobile Information-Centric Network

  • Han, Longzhe;Maksymyuk, Taras;Bao, Xuecai;Zhao, Jia;Liu, Yan
    • KSII Transactions on Internet and Information Systems (TIIS)
    • /
    • 제13권9호
    • /
    • pp.4572-4586
    • /
    • 2019
  • Mobile Edge Computing (MEC) and Information-Centric Networking (ICN) are essential network architectures for the future Internet. The advantages of MEC and ICN such as computation and storage capabilities at the edge of the network, in-network caching and named-data communication paradigm can greatly improve the quality of video streaming applications. However, the packet loss in wireless network environments still affects the video streaming performance and the existing loss recovery approaches in ICN does not exploit the capabilities of MEC. This paper proposes a Deep Learning based Loss Recovery Mechanism (DL-LRM) for video streaming over MEC based ICN. Different with existing approaches, the Forward Error Correction (FEC) packets are generated at the edge of the network, which dramatically reduces the workload of core network and backhaul. By monitoring network states, our proposed DL-LRM controls the FEC request rate by deep reinforcement learning algorithm. Considering the characteristics of video streaming and MEC, in this paper we develop content caching detection and fast retransmission algorithm to effectively utilize resources of MEC. Experimental results demonstrate that the DL-LRM is able to adaptively adjust and control the FEC request rate and achieve better video quality than the existing approaches.