scholarly journals Mapping in unstructured natural environment: a sensor fusion framework for wearable sensor suites

2021 ◽  
Vol 3 (5) ◽  
Author(s):  
Georges Chahine ◽  
Maxime Vaidis ◽  
François Pomerleau ◽  
Cédric Pradalier

AbstractWe present a generalized mapping framework that can withstand the challenges incurred by working in unstructured outdoor environments, such as a snowy forest. The proposed method takes advantage of a sensor fusion scheme, where sensors such as cameras and lidars are used in order to reconstruct the surrounding natural environment. Although mapping techniques such as SLAM and ICP cannot themselves properly handle the complexity of natural scenes, they do have the potential to contribute to the global solution in a proposed sensor fusion scheme, based on a factor graph architecture. In this paper, we propose an innovative map registration scheme for visual maps, and show how it can improve the reconstruction quality after data fusion. We also analyze the behavior and sensitivity of factor graphs to uncertainties, by comparing the residual error with different parameter combinations such as variances, using an exhaustive grid search with ground truth comparison. Finally, we suggest an ICP-inferred loop closure, capable of compensating position and attitude drift. The experiments are carried out by recording in a snowy forest using a wearable sensor suite. In the experiments, ground truth was acquired using a millimeter-accurate total station. The proposed framework is shown to be robust and likewise capable of providing estimates that are otherwise unattainable using classic techniques, such as visual SLAM and ICP for lasers. Finally, a visible improvement in the map reconstruction quality is shown, and the proposed framework achieves a translation error of 0.36 m.

Technologies ◽  
2017 ◽  
Vol 5 (3) ◽  
pp. 39 ◽  
Author(s):  
Ivan Trujillo-Priego ◽  
Christianne Lane ◽  
Douglas Vanderbilt ◽  
Weiyang Deng ◽  
Gerald Loeb ◽  
...  

Author(s):  
Salil Apte ◽  
Frederic Meyer ◽  
Vincent Gremeaux ◽  
Farzin Dadashi ◽  
Kamiar Aminian

IEEE Access ◽  
2018 ◽  
Vol 6 ◽  
pp. 12775-12789 ◽  
Author(s):  
Gustavo Hernandez-Penaloza ◽  
Alberto Belmonte-Hernandez ◽  
Marcos Quintana ◽  
Federico Alvarez

2018 ◽  
Vol 2 ◽  
pp. 17
Author(s):  
Joanne Shida-Tokeshi ◽  
Christianne J. Lane ◽  
Ivan A. Trujillo-Priego ◽  
Weiyang Deng ◽  
Douglas L. Vanderbilt ◽  
...  

Background: Advances in wearable sensor technology now allow us to quantify the number, type and kinematic characteristics of bouts of infant arm movement made across a full day in the natural environment. Our aim here was to determine whether the amount and kinematic characteristics of arm movements made across the day in the natural environment were related to developmental status in infants with typical development as they learned to reach for objects using their arms. Methods: We used wearable sensors to measure arm movement across days and months as infants developed arm reaching skills. In total, 22 infants with typical development participated, aged between 38 and 203 days. Of the participants, 2 infants were measured once and the other 20 infants were measured once per month for 3 to 6 visits. The Bayley Scales of Infant Development was used to measure developmental level. Results: Our main findings were: 1) infant arm movement characteristics as measured by full-day wearable sensor data were related to Bayley motor, cognitive and language scores, indicating a relationship between daily movement characteristics and developmental status; 2) infants who moved more had larger increases in language and cognitive scores across visits; and 3) larger changes in movement characteristics across visits were related to higher motor scores. Conclusions: This was a preliminary, exploratory, small study of the potential importance of infant arm movement characteristics as measured by full-day wearable sensor data. Our results support full-day arm movement activity as an area of interest for future study as a biomarker of neurodevelopmental status and as a target for early intervention.


Author(s):  
Jesús García ◽  
Jose Manuel Molina ◽  
Jorge Trincado

This paper presents a methodology to design sensor fusion parameters using real performance indicators of navigation in UAVs based on PixHawk flight controller and peripherals. This methodology and the selected performance indicators allows to find the best parameters for the fusion system of a determined configuration of sensors and a predefined real mission. The selected real platform is described with stress on available sensors and data processing software, and the experimental methodology is proposed to characterize sensor data fusion output and determine the best choice of parameters using quality measurements of tracking output with performance metrics not requiring ground truth.


Sensors ◽  
2019 ◽  
Vol 19 (10) ◽  
pp. 2240 ◽  
Author(s):  
Zhenyu Wang ◽  
Leo Chiang

With the emergence of Industry 4.0, also known as the fourth industrial revolution, an increasing number of hardware and software sensors have been implemented in chemical production processes for monitoring key variables related to product quality and process safety. The accuracy of individual sensors can be easily impaired by a variety of factors. To improve process monitoring accuracy and reliability, a sensor fusion scheme based on Bayesian inference is proposed. The proposed method is capable of combining multi-rate sensor data and eliminating the spurious signals. The efficacy of the method has been verified using a process implemented at the Dow Chemical Company. The sensor fusion approach has improved the process monitoring reliability, quantified by the rates of correctly identified impurity alarms, as compared to the case of using an individual sensor.


2017 ◽  
Vol 4 ◽  
pp. 205566831771746 ◽  
Author(s):  
Ivan A Trujillo-Priego ◽  
Beth A Smith

Introduction Our purpose is to directly measure variability in infant leg movement behavior in the natural environment across a full day. We recently created an algorithm to identify an infant-produced leg movement from full-day wearable sensor data from infants with typical development between one and 12 months of age. Here we report the kinematic characteristics of their leg movements produced across a full day. Methods Wearable sensor data were collected from 12 infants with typical development for 8–13 h/day. A wearable sensor was attached to each ankle and recorded triaxial accelerometer and gyroscope measurements at 20 Hz. We determined the duration, average acceleration, and peak acceleration of each leg movement and classified its type (unilateral, bilateral synchronous, bilateral asynchronous). Results There was a range of leg movement duration (0.23–0.33 s) and acceleration (average 1.59–3.88 m/s2, peak 3.10–8.83 m/s2) values produced by infants across visits. Infants predominantly produced unilateral and asynchronous bilateral movements. Our results collected across a full day are generally comparable to kinematic measures obtained by other measurement tools across short periods of time. Conclusion Our results describe variable full-day kinematics of leg movements across infancy in a natural environment. These data create a reference standard for the future comparison of infants at risk for developmental delay.


Measurement ◽  
2019 ◽  
Vol 131 ◽  
pp. 615-627 ◽  
Author(s):  
Mohamed M. Atia ◽  
Steven L. Waslander
Keyword(s):  

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