From: http://liudongdong1.github.io
keyword:
WIDESEE: Towards Wide-Area Contactless Wireless Sensing
challenges:
redesign the antenna system and the sensing algorithm, employ a compact reconfigurable directional antenna at the receiver to narrow down the target sensing region,to stay focus on the area of interests
level: Mobile Data Management
author: Nirmalya Roy ,School of Information Systems, Singapore Management University
date: 2015
keyword:
AARPA: Combining Mobile and Power-line Sensing for Fine-grained Appliance Usage and Energy Monitoring
applies correlation over both macroscopic and microscopic power consumption features, to identify the total usage duration, and the total energy consumption, of individual devices, from such circuit-breaker level aggregated data.
helps capture the energy consumption characteristics of low-load,
commonly-used domestic appliances
provides useful additional context about the lifestyle habits and context of
an individual
Green Building Energy Management using Plug Load Meters
Smartphone and Sensor based Energy Prediction:
Beware [3] provides the user information on energy consumption of entire home. Detect the electricity consumption of different devices and notify the user if the devices use more energy than expected
Energy Lens [11] provides deeper real time visibility of plug-load
energy consumption in buildings. It uses the mobile phone to provide a consumer with real-time energy analytics
the ability to precisely capture the usage profile of everyday consumer appliances also provides insight into an individual’s context
Fine-grained monitoring of everyday appliances (such as toasters and coffee makers) can not only promote energy-efficient building operations, but also provide unique insights into the context and activities of individuals
develop a novel correlation-based approach called CBPA to identify individual
appliances based on both their unique transient and steady state power signatures.
uses mobile sensing to first infer high-level activities of daily living (ADLs), and
then uses knowledge of such ADLs to effectively reduce the set of candidate appliances that potentially contribute to the aggregate readings at any point
Co-locating services in IoT systems to minimize the communication energy cost
Purpose:
various device sleep scheduling algorithms [3] to keep some devices power off
running at a low-power mode. Another approach is to reduce
network communication traffic to conserve energy
level: PACM Interact. Mob
keyword:
RFID Light Bulb: Enabling Ubiquitous Deployment of Interactive RFID Systems
RFID :inexpensive, wireless, batery-free connectivity and interactivity for objects that are traditionally not instrumented
complexity of installing bulky RFID readers, antennas, and their supporting power and network infrastructure
IOT devices:door locks, security cameras, thermostats, voice-based personal assistants, and even simple butons that automate internet retail purchases.
Bluetooth Low Energy, Zigbee, and Wi-Fi are all examples of networking technologies that connect these diferent classes of devices.
RFID application:
Light-Assisted Navigation
Infrastructure Monitoring
Ambient Contextual Timers: a timer in conjunction with a
machine to inform a user that a particular activity has completed
Prepackaged Content:
designed an RFID Light Bulb (Figure 1): a Wi-Fi-connected smart LED bulb
that contains an integrated RFID reader and antenna
rototype whole-house interactive RFID applications that demonstrate the efectiveness of our bulbs
level: Journal of Intelligent & Fuzzy Systems
author: School of Engineering, Cardiff University, Cardiff, CF24 3AA, United Kingdom
date: 2019
keyword:
A hybrid approach of knowledge-driven and data-driven reasoning for activity recognition in smart homes
previous work:
smart home:
identify activities and patterns of daily routines context : location, time,object used ..
monitor environmental changes using sensors installed in different locations and deployed on various objects [4]
activity recognition [5], predicting human behaviour [6] and detecting
early diseases [7, 8]
data-driven: machine learning or deep learning, code-start problem that require large sensor data, difficult to adapt in different environment
knowledge-driven reasoning: priori knowledge about the world to build activities models using knowledge representation. the inference model is static and general ,difficult to recognize every type of human activities in home setting
Problem Formulation:
system overview:
The common-sense knowledge base contains a collection of semantic concepts and their relationships that are related to the basic understanding of the
environment.
the domain-specific knowledge base is used to represent concepts that are specifically described with respect to a certain domain in order to improve the principal understanding of the environment
scenario:
infer users’ activities through a description logic rule-based inference system:
level: CVPR
author:Fl´avia Dias Casagrande and Evi Zouganeli
date: 2019
keyword:
Activity Recognition and Prediction in Real Homes
Application Area:assisting functions with reminders or encouragement, diagnosis tools, alarm creation, prediction ,anticipation and prevention of hazardous situations
Purpose: activity recognition and prediction in real homes using either binary sensor data or
depth video data classify four activities –no movement, standing up, sitting down, and TV interaction
system overview:
A Short Note on the Kinetics-700 Human Action Dataset
keyword:
A Unified Framework for Activity Recognition-Based Behavior Analysis and Action Prediction in Smart Homes
keyword:
What’s Your Next Move: User Activity Prediction in Location-based Social Networks
keyword:
SmrtFridge: IoT-based, User Interaction-Driven Food Item & !antity Sensing
A Survey on Ambient-Assisted Living Tools for Older Adults
下图网格表示一个房间,网格中每一个点摆放RFID标签,rfid标签存储物体或者位置相关信息,可以根据相位或者RSSI分为几个状态,并将值量化。
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