본문바로가기

자료 카테고리

전체 1
도서자료 0
학위논문 0
연속간행물·학술기사 1
멀티미디어 0
동영상 0
국회자료 0
특화자료 0

도서 앰블럼

전체 (0)
일반도서 (0)
E-BOOK (0)
고서 (0)
세미나자료 (0)
웹자료 (0)
전체 (0)
학위논문 (0)
전체 (1)
국내기사 (1)
국외기사 (0)
학술지·잡지 (0)
신문 (0)
전자저널 (0)
전체 (0)
오디오자료 (0)
전자매체 (0)
마이크로폼자료 (0)
지도/기타자료 (0)
전체 (0)
동영상자료 (0)
전체 (0)
외국법률번역DB (0)
국회회의록 (0)
국회의안정보 (0)
전체 (0)
표·그림DB (0)
지식공유 (0)

도서 앰블럼

전체 1
국내공공정책정보
국외공공정책정보
국회자료
전체 ()
정부기관 ()
지방자치단체 ()
공공기관 ()
싱크탱크 ()
국제기구 ()
전체 ()
정부기관 ()
의회기관 ()
싱크탱크 ()
국제기구 ()
전체 ()
국회의원정책자료 ()
입법기관자료 ()

검색결과

검색결과 (전체 1건)

검색결과제한

열기
기사명/저자명
Significant Motion-Based Adaptive Sampling Module for Mobile Sensing Framework / Muhammad Fiqri Muthohar, I Gde Dharma Nugraha, Deokjai Choi 인기도
발행사항
Seoul : Korea information processing society, 2018.08.30
수록지명
Journal of information processing systems. Vol. 14 no. 4 Serial no.52 (Aug. 2018), p.948-960
자료실
[서울관] 정기간행물실(524호)  도서위치안내(서울관)
외부기관 원문
외부기관 원문
제어번호
KINX2018224614
주기사항
한국연구재단에서 제공한 KCI 등재학술(후보)지임
원문

초록보기 더보기

Many mobile sensing frameworks have been developed to help researcher doing their mobile sensing research. However, energy consumption is still an issue in the mobile sensing research, and the existing frameworks do not provide enough solution for solving the issue. We have surveyed several mobile sensing frameworks and carefully chose one framework to improve. We have designed an adaptive sampling module for a mobile sensing framework to help solve the energy consumption issue. However, in this study, we limit our design to an adaptive sampling module for the location and motion sensors. In our adaptive sampling module, we utilize the significant motion sensor to help the adaptive sampling. We experimented with two sampling strategies that utilized the significant motion sensor to achieve low-power consumption during the continuous sampling. The first strategy is to utilize the sensor naively only while the second one is to add the duty cycle to the naive approach. We show that both strategies achieve low energy consumption, but the one that is combined with the duty cycle achieves better result.

권호기사보기

권호기사 목록 테이블로 기사명, 저자명, 페이지, 원문, 기사목차 순으로 되어있습니다.
기사명 저자명 페이지 원문 기사목차
Speaker Verification with the Constraint of Limited Data Thyamagondlu Renukamurthy Jayanthi Kumari, Haradagere Siddaramaiah Jayanna p.807-823 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
Significant Motion-Based Adaptive Sampling Module for Mobile Sensing Framework Muhammad Fiqri Muthohar, I Gde Dharma Nugraha, Deokjai Choi p.948-960 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
Integrated Lighting Enabler System Using M2M Platforms for Enhancing Energy Efficiency Maman Abdurohman, Aji Gautama Putrada, Sidik Prabowo, Catur Wirawan Wijiutomo, Asma Elmangoush p.1033-1048 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
Predicting the Unemployment Rate Using Social Media Analysis Pum-Mo Ryu p.904-915 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
QP-DTW : Upgrading Dynamic Time Warping to Handle Quasi Periodic Time Series Alignment Imen Boulnemour, Bachir Boucheham p.851-876 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
Clustering Algorithm Considering Sensor Node Distribution in Wireless Sensor Networks Boseon Yu, Wonik Choi, Taikjin Lee, Hyunduk Kim p.926-940 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
A New Perspective to Stable Marriage Problem in Profit Maximization of Matrimonial Websites Aniket Bhatnagar, Varun Gambhir, Manish Kumar Thakur p.961-979 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
Arm Orientation Estimation Method with Multiple Devices for NUI/NUX Yunsick Sung, Ryong Choi, Young-Sik Jeong p.980-988 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
Gait Recognition Algorithm Based on Feature Fusion of GEI Dynamic Region and Gabor Wavelets Jun Huang, Xiuhui Wang, Jun Wang p.892-903 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
Analysis of Academic Evaluation Indicators Based on Citation Quality Mingyue Zhang, Jin Shi, Jin Wang, Chang Liu p.916-925 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
A Solution towards Eliminating Transaction Malleability in Bitcoin Ubaidullah Rajput, Fizza Abbas, Heekuck Oh p.837-850 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
Motion-Blurred Shadows Utilizing a Depth-Time Ranges Shadow Map MinhPhuoc Hong, Kyoungsu Oh p.877-891 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
An Improved Spin Echo Train De-noising Algorithm in NMRL Feng Liu, Shuangbao Ma p.941-947 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
An Efficient Implementation of Mobile Raspberry Pi Hadoop Clusters for Robust and Augmented Computing Performance Kathiravan Srinivasan, Chuan-Yu Chang, Chao-Hsi Huang, Min-Hao Chang, Anant Sharma, Avinash Ankur p.989-1009 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
Restful Web Services Composition Using Semantic Ontology for Elderly Living Assistance Services Sheik Mohammad Mostakim Fattah, Ilyoung Chong p.1010-1032 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
Measuring the Degree of Content Immersion in a Non-experimental Environment Using a Portable EEG Device Nam-Ho Keum, Taek Lee, Jung-Been Lee, Hoh Peter In p.1049-1061 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )
Applying Lexical Semantics to Automatic Extraction of Temporal Expressions in Uyghur Alim Murat, Azharjan Yusup, Zulkar Iskandar, Azragul Yusup, Yusup Abaydulla p.824-836 원문보기 (음성지원, 국회도서관 방문 후 이용 가능 )

참고문헌 (28건) : 자료제공( 네이버학술정보 )더보기

참고문헌 목록에 대한 테이블로 번호, 참고문헌, 국회도서관 소장유무로 구성되어 있습니다.
번호 참고문헌 국회도서관 소장유무
1 T. Faetti and R. Paradiso, "A novel wearable system for elderly monitoring," Advances in Science and Technology, vol. 85, pp. 17-22, 2013. 미소장
2 An Android-Based Heart Monitoring System for the Elderly and for Patients with Heart Disease 네이버 미소장
3 Android and ODK based data collection framework to aid in epidemiological analysis. 네이버 미소장
4 Mobile Health: Revolutionizing Healthcare Through Transdisciplinary Research 네이버 미소장
5 HMM-Based Human Fall Detection and Prediction Method Using Tri-Axial Accelerometer 네이버 미소장
6 Distinguishing the causes of falls in humans using an array of wearable tri-axial accelerometers 네이버 미소장
7 P. Zhou, Y. Zheng, and M. Li, "How long to wait? Predicting bus arrival time with mobile phone based participatory sensing," in Proceedings of the 10th International Conference on Mobile Systems, Applications, and Services, Low Wood Bay, UK, 2012, pp. 379-392. 미소장
8 R. LiKamWa, Y. Liu, N. D. Lane, and L. Zhong, "Can your smartphone infer your mood," in Proceedings of International Workshop on Sensing Applications on Mobile Phone (PhoneSense), Seattle, WA, 2011, pp. 1-5. 미소장
9 A. Bogomolov, B. Lepri, and F. Pianesi, "Happiness recognition from mobile phone data," in Proceedings of 2013 International Conference on Social Computing (SocialCom), Alexandria, VA, 2013, pp. 790-795. 미소장
10 Mining large-scale smartphone data for personality studies 네이버 미소장
11 V. K. Singh, L. Freeman, B. Lepri, and A. S. Pentland, "Predicting spending behavior using socio-mobile features," in Proceedings of 2013 International Conference on Social Computing, Alexandria, VA, 2013, pp. 174-179. 미소장
12 N. Maisonneuve, M. Stevens, M. E. Niessen, and L. Steels, "NoiseTube: measuring and mapping noise pollution with mobile phones," in Information Technologies in Environmental Engineering. Heidelberg: Springer, 2009, pp. 215-228. 미소장
13 H. M. Thang, V. Q. Viet, N. D. Thuc, and D. Choi, "Gait identification using accelerometer on mobile phone," in Proceedings of 2012 International Conference on Control, Automation and Information Sciences (ICCAIS), Ho Chi Minh, Vietnam, 2012, pp. 344-348. 미소장
14 Secure and Privacy Enhanced Gait Authentication on Smart Phone 네이버 미소장
15 J. A. Burke, D. Estrin, M. Hansen, A. Parker, N. Ramanathan, S. Reddy, and M. B. Srivastava, "Participatory sensing," in Proceedings of the 1st Workshop on World-Sensor-Web: Mobile Device Centric Sensory Networks and Applications (WSW 2006), Boulder CO, 2006. 미소장
16 IEEE Communications Magazine 네이버 미소장
17 Mobile cloud sensing, big data, and 5G networks make an intelligent and smart world 네이버 미소장
18 K. K. Rachuri, C. Mascolo, M. Musolesi, and P. J. Rentfrow, "Sociablesense: exploring the trade-offs of adaptive sampling and computation offloading for social sensing," in Proceedings of the 17th Annual International Conference on Mobile Computing and Networking, Las Vegas, NV, 2011, pp. 73-84. 미소장
19 Google Developers, "About Android," [Online]. Available: https://developer.android.com/about/. 미소장
20 GitHub Inc., "funf-core-android," 2016 [Online]. Available: https://github.com/funf-org/funf-coreandroid/wiki/Configuration. 미소장
21 K. Katevas, H. Haddadi, and L. Tokarchuk, "Poster: Sensingkit: a multi-platform mobile sensing framework for large-scale experiments," in Proceedings of the 20th Annual International Conference on Mobile Computing and Networking, Maui, HI, 2014, pp. 375-378. 미소장
22 MSF: An Efficient Mobile Phone Sensing Framework 네이버 미소장
23 G. Cardone, A. Cirri, A. Corradi, L. Foschini, and R. Montanari, "Activity recognition for smart city scenarios: Google play services vs. MoST facilities," in Proceedings of 2014 IEEE Symposium on Computers and Communication (ISCC), Funchal, Portugal, 2014, pp. 1-6. 미소장
24 Google Developers, "Sensors overview," [Online]. Available: https://developer.android.com/guide/topics/sensors/sensors_overview. 미소장
25 Google Developers, "Sensor types," [Online]. Available: https://source.android.com/devices/sensors/sensor-types#significant_motion. 미소장
26 Google Developers, "Android dashboard," [Online]. Available: https://developer.android.com/about/dashboards/. 미소장
27 OpenSignal, "Android fragmentation (August 2015)," [Online]. Available: https://opensignal.com/reports/2015/08/android-fragmentation/. 미소장
28 K. S. Narendra and M. A. Thathachar, Learning Automata: An Introduction. Mineola, NY: Dover Publications, 2012. 미소장

권호기사보기

권호기사 목록 테이블로 기사명, 저자명, 페이지, 원문, 기사목차 순으로 되어있습니다.
기사명 저자명 페이지 원문 기사목차
연속간행물 팝업 열기 연속간행물 팝업 열기