yu luo* andrea presotto lan mu university of georgia
TRANSCRIPT
![Page 1: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/1.jpg)
Exploratory analysis of Spatio-temporal movement patterns of
Black Capuchin Monkeys in Brazil
Yu Luo*Andrea Presotto
Lan MuUniversity of Georgia
![Page 2: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/2.jpg)
OutlinesIntroductionStudy Area and DataMethodologyResultSummary
![Page 3: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/3.jpg)
IntroductionPeople have always been interested in moving
trajectories around us. e.g. Bird migration, Ant’s routing, Bee’s Waggle Dance
Study animals’ movement helps us better understand their cognition, such as memory and navigation
Bar-tailed Godwit Migratory Routes
![Page 4: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/4.jpg)
IntroductionLab Constraint
The recent development of location-aware devices provides great opportunities:track the animals’ movement over large
spatial extent with great accuracy
But also challenges: the high-resolution GPS tracking produces
mass data Large data volume: short recording intervals Complex data structure: space, time, attributes
![Page 5: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/5.jpg)
Any rules? Or any moving strategy?
![Page 6: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/6.jpg)
This project…
Cebus nigritus:
Widely lived in Atlantic Forest in south-eastern Brazil and far north-eastern Argentina
The study group had 14 individuals, including one dominant male, one adult male, threefemales, three infants and six juveniles
![Page 7: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/7.jpg)
Data CollectionBlack Capuchin movement data (2007)
Follow the objective group of monkeys and record the geographic coordinates at five-minute interval
Food patches along the routes
Environment Data: DEM, RS (CBERS),Hydrology
![Page 8: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/8.jpg)
![Page 9: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/9.jpg)
DataSome unique features of the Data
Difficulty in data-collectionThe study area is a deep forest, the low
visibility greatly increases the uncertainties of the monkeys’ movement
We got only one group of monkeys’ motion, we should be careful before making any conclusive statement
At this stage, this study focuses on data explorationdata quantification, query and representation
![Page 10: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/10.jpg)
ObjectivesTo analyze the movement pattern of the black
capuchin monkey in Brazil based on the GPS-collected data
To develop better techniques to explore the mass data, with a focus on the temporal perspective
Integrate all the functions into a toolbox for primatologist or cognition scientist to explore the data
![Page 11: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/11.jpg)
MethodologyDescriptive Statistics:
to get a general view of the monkeys’ movement
Exploratory Data Analysis:Explore the in-path attribute dynamics
Space-time Aquarium x and y for space, and z for time
Attribute Clock inspired by Michael Batty’s Rank Clock (Nature,2006) project temporal changes in the clock angle: time; radius: value data in this project suitable for this visualization
![Page 12: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/12.jpg)
TT-plot
Transform 3d motion data to 2d representation by converting the spatial component to an inter-event distance matrix and adding a second time axis (Imfeld,2000)
For example, the TT- δ plot The x and y are both time, the value at the point
(t1 ,t2) is the distance δ between two locations Pt1 and Pt2.
If there is a zero value point, it implies that the moving object revisit the same location. Indicator of memory
t1
t2
x
y
![Page 13: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/13.jpg)
ResultsDescriptive Statistics
Home range: 4.6km2
Average Travel Length: 2042.379 mAverage Sinuosity: 4.846Average Elevation: 816.846m
Ranging from 759 – 911 m
![Page 14: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/14.jpg)
Comparison between April and May
11-A
pr
14-A
pr
17-A
pr
20-A
pr
23-A
pr
26-A
pr
29-A
pr
2-M
ay
5-M
ay
8-M
ay
11-M
ay
14-M
ay
17-M
ay0
5001000150020002500300035004000
Daily Movement Length (m)
11-A
pr
14-A
pr
17-A
pr
20-A
pr
23-A
pr
26-A
pr
29-A
pr
2-M
ay
5-M
ay
8-M
ay
11-M
ay
14-M
ay
17-M
ay0
2
4
6
8
10
12
Sinuosity (length/beeline)
11-A
pr
14-A
pr
17-A
pr
20-A
pr
23-A
pr
26-A
pr
29-A
pr
2-M
ay
5-M
ay
8-M
ay
11-M
ay
14-M
ay
17-M
ay0
0.1
0.2
0.3
0.4
0.5
Mean Vector Length (0,1)
Coincided with Pre-knowledge:
•More food, more energy• Longer length• More random search pattern,
higher sinuosity and lower mean vector length
•But not obvious
![Page 15: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/15.jpg)
Null Hypothesis p-value Result
April Length < May Length 0.0001 reject
April Sinuosity < May Sinuosity 0.533 non-reject
April MVL > May MVL 0.094 non-reject
April TAMS < May TAMS 0.382 non-reject
Welch Two Sample t-test
Hypothesis test shows the activity pattern is not
obviously different between April and May.
The analysis of the in-path dynamics is necessary.
![Page 16: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/16.jpg)
Exploratory data analysis
![Page 17: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/17.jpg)
Space-time Aquarium
![Page 18: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/18.jpg)
![Page 19: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/19.jpg)
Attribute Clock
1.Attibute dynamics in April 17th
e.g.: elevation min: 781m max: 852m
2.Activity dynamics green: eating red : non-eating
3.Aggreated level 3 days paths overlay
![Page 20: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/20.jpg)
Because monkeys stop frequently, some attributes are not continuous over space-time, such as velocity. If we still use line to connect the points:
Instead, use “transparent pies” to represent the time sequence and emphasize the stop period
We can overlap the data
The transparency shows how often the monkeys stop during that period
Lower Transparency, More Stops
![Page 21: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/21.jpg)
TT- δ plot
Random Search Path
Oriented Path
![Page 22: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/22.jpg)
Space and timeImage processing techniques
Resolution: time scale Resample, Interpolation
Pattern recognition
TT- X? Other attributes can also be explored
2D space
![Page 23: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/23.jpg)
SummaryTracking the animals’ movement is a promising
way to study the animals’ behavior and cognition. But challenges such as complex data structure, temporal analysis need to addressed
The exploratory data analysis techniques presented in this project help us better understand the monkeys’ behavior pattern
Future work need to be done to model and simulate the cognition effects
![Page 24: Yu Luo* Andrea Presotto Lan Mu University of Georgia](https://reader038.vdocuments.mx/reader038/viewer/2022103015/551778555503463e368b4ee4/html5/thumbnails/24.jpg)
Thank youAny Question?