Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

INIM: Inertial Images Construction with Applications to Activity Recognition

View through CrossRef
Human activity recognition aims to classify the user activity in various applications like healthcare, gesture recognition and indoor navigation. In the latter, smartphone location recognition is gaining more attention as it enhances indoor positioning accuracy. Commonly the smartphone’s inertial sensor readings are used as input to a machine learning algorithm which performs the classification. There are several approaches to tackle such a task: feature based approaches, one dimensional deep learning algorithms, and two dimensional deep learning architectures. When using deep learning approaches, feature engineering is redundant. In addition, while utilizing two-dimensional deep learning approaches enables to utilize methods from the well-established computer vision domain. In this paper, a framework for smartphone location and human activity recognition, based on the smartphone’s inertial sensors, is proposed. The contributions of this work are a novel time series encoding approach, from inertial signals to inertial images, and transfer learning from computer vision domain to the inertial sensors classification problem. Four different datasets are employed to show the benefits of using the proposed approach. In addition, as the proposed framework performs classification on inertial sensors readings, it can be applied for other classification tasks using inertial data. It can also be adopted to handle other types of sensory data collected for a classification task.
Title: INIM: Inertial Images Construction with Applications to Activity Recognition
Description:
Human activity recognition aims to classify the user activity in various applications like healthcare, gesture recognition and indoor navigation.
In the latter, smartphone location recognition is gaining more attention as it enhances indoor positioning accuracy.
Commonly the smartphone’s inertial sensor readings are used as input to a machine learning algorithm which performs the classification.
There are several approaches to tackle such a task: feature based approaches, one dimensional deep learning algorithms, and two dimensional deep learning architectures.
When using deep learning approaches, feature engineering is redundant.
In addition, while utilizing two-dimensional deep learning approaches enables to utilize methods from the well-established computer vision domain.
In this paper, a framework for smartphone location and human activity recognition, based on the smartphone’s inertial sensors, is proposed.
The contributions of this work are a novel time series encoding approach, from inertial signals to inertial images, and transfer learning from computer vision domain to the inertial sensors classification problem.
Four different datasets are employed to show the benefits of using the proposed approach.
In addition, as the proposed framework performs classification on inertial sensors readings, it can be applied for other classification tasks using inertial data.
It can also be adopted to handle other types of sensory data collected for a classification task.

Related Results

Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Evaluating the Science to Inform the Physical Activity Guidelines for Americans Midcourse Report
Abstract The Physical Activity Guidelines for Americans (Guidelines) advises older adults to be as active as possible. Yet, despite the well documented benefits of physical a...
Inertial Forces Acting on a Propeller of Aircraft
Inertial Forces Acting on a Propeller of Aircraft
Background:Aerospace vehicles use propellers with the different design that possess gyroscopic properties. Recent investigations in the area of gyroscope theory have demonstrated t...
Orthoscopic elemental image synthesis for 3D light field display using lens design software and real-world captured neural radiance field
Orthoscopic elemental image synthesis for 3D light field display using lens design software and real-world captured neural radiance field
The elemental images (EIs) generation of complex real-world scenes can be challenging for conventional integral imaging (InIm) capture techniques since the pseudoscopic effect, cha...
Gravity compensation for long-duration underwater inertial navigation systems
Gravity compensation for long-duration underwater inertial navigation systems
Abstract As a core technology for autonomous navigation technology, inertial navigation offers high disturbance robustness as well as low observability. It plays ...
Inertial torques acting on a spinning paraboloid
Inertial torques acting on a spinning paraboloid
Numerous gyroscopic devices consist of rotating components that manifest gyroscopic effects, i.e., the action of unexplainable inertial torques. The rotating objects in engineering...
Relativity theory, philosophical significance of
Relativity theory, philosophical significance of
There are two parts to Albert Einstein’s relativity theory, the special theory published in 1905 and the general theory published in its final mathematical form in 1915. The specia...
A Novel Local‐Inertial Formulation Representing Subgrid Scale Topographic Effects for Urban Flood Simulation
A Novel Local‐Inertial Formulation Representing Subgrid Scale Topographic Effects for Urban Flood Simulation
AbstractThe local‐inertial approximations of the shallow water equations (SWEs) have been used for flood forecasting at larger spatial scales owing to the improved computational ef...
Using Inertial Sensors to Determine Head Motion—A Review
Using Inertial Sensors to Determine Head Motion—A Review
Human activity recognition and classification are some of the most interesting research fields, especially due to the rising popularity of wearable devices, such as mobile phones a...

Back to Top