Applying Mobile Augmented Reality (AR) to Teach Interior Design Students in Layout Plans: Evaluation of Learning Effectiveness Based on the ARCS Model of Learning Motivation Theory
Abstract
:1. Introduction
1.1. The Importance of Motivation in Learning
1.2. Keller’s Attention–Relevance–Confidence–Satisfaction (ARCS) Motivational Learning Design Theory
1.3. Converging Keller’s ARCS Motivational Learning Design Theory with New Technologies such as Augmented Reality (AR)
1.4. Aims and Goals of this Study
- Are Keller’s theories in motivational instructional design theories applicable for new digital learning technologies such as MAR?
- In which ways does MAR-based technology improve the various components of Keller’s ARCS motivational theory consisting of Attention, Relevance, Confidence, and Satisfaction?
- Which methods are suitable to measure and verify Keller’s components in an experimental setting, utilizing new innovative technologies?
- How does MAR technology-based teaching design affect students’ motivation, interest in learning, learning satisfaction, learning outcomes, and behavior?
- In which ways can the design of interior design courses benefit from AR-based textbooks, and how does the way of learning change?
2. Literature Review
2.1. Augmented Reality (AR)
2.2. Learning Motivation Theory: The ARCS Model
3. Mobile Augmented Reality (MAR) System
3.1. Software Environment
- Unity 2018.1.5f1: main software platform of this AR application, upon which we included the built-in Vuforia Augmented Reality Software Development Kit.
- Android SDK Tools: to export Android application package (APK) that required Kit of Unity.
- Java SE Development Kit 8: to export APK Required Kit of Unity.
- Various platforms are supported by changing the build target of our current project to e.g., iPhone operating system (iOS).
- Photoshop and Illustrator: user interface software for content creation.
- Android operating system or iOS: the platform of the MAR application.
3.2. Interior Deployment Layout and Symbols
4. Research Design, Methods and Approach
4.1. Research Phases
- phase 1 (pre-test stage): this phase was carried out one week before the experimental teaching, and both—the experimental, and the reference group were tested for their knowledge in interior design;
- phase 2 (experimental teaching stage): during this phase, the experimental group received two lessons (each of 40 min duration) of interior design teaching activities. We integrated our own developed mobile based AR design system for this group. The control group was exposed to the same teaching activities, however, we utilized traditional teaching activities to be able to compare learning effect;
- phase 3 (post-experimental teaching stage): both groups—the experimental and reference group—Have been tested after the 18th teaching week to identify the learning effectiveness, and the results of our experimental way of teaching.
4.2. Knowledge Test Questionnaire Design
- Students understand the structure of interior design layout and plans;
- Students understand the dimensioning of interior design layout and plans;
- Students understand the flow of interior design layout and plans;
- Students understand the layout functions in interior design layout and plans;
- Students understand design symbols and placement of design objects as e.g., sofa, TV, bathroom, closet, and other furniture components.
4.3. Design of the Evaluation of Student’s Motivation through the ARCS Model
- ATTENTION—learning interest (5 questions),
- RELEVANCE—textbook design and teaching methods (5 questions),
- CONFIDENCE—learning behavior performance (confidence 5 questions),
- SATISFACTION—learning satisfaction (5 questions).
- Learning interest is referred to an intrinsic tendency, as an individual concentrate on a certain activity. It is also a part of the learner’s personality. In general, learners will take more effort and time for an activity that they are interested in and from which they are obtaining satisfaction [31]. Following the same patter, learning interest refers to students investing their efforts and time to obtain satisfaction while experiencing a learning progress.
- Evaluation of the design of textbooks, teaching materials, and methods to identify the level of student interest in MAR-based learning after letting the students familiarize themselves with the subject matter of interior design courses, and the new teaching technology.
- Learning behavior to measure whether students have improved their self-confidence after using MAR.
- Studying the satisfaction of the facet “learning” therefore means to understand whether students agree to use MAR, and then furthermore to evaluate the degree of likes and dislikes of MAR, and whether there is a willingness to use it again in future learning sessions.
5. Testing Student’s Subject Knowledge Prior to and after the Experiments
- Analysis of average number and standard deviation of the test results before and after the analysis of the experimental group and the control group by the independent sample t.
- Evaluation of test scores for learning outcomes’ five indicators were evaluated for single-factor covariance analysis to examine if the two groups of students were homogenous.
- Two-way learning results and one-way analysis of variance (ANOVA) to determine whether the different teaching methods affect difference in learning outcomes.
- Correlation analysis of the ARCS learning motivation model for the research model.
- Regression analysis to validate research models and research hypotheses.
5.1. Evaluation of Learning Performance for Test and Control Group (Independent Sample t-Test Analysis)
5.2. Determination of the Learning Ability of both Test- and Control Groups
5.3. Evaluation of Learning Outcomes (Single Factor Covariate Analysis)
6. Evaluation of Students’ Motivation through the ARCS Questionnaire
6.1. Descriptive Statistic and Reliability of the Analysis
6.2. Analysis of the Questionnaire Validity
6.3. Correlation between Learing Interest-Teaching Design-Behaviour-Satisfaction-Effectiveness (Analysis of the Correlation Coefficients)
- there was a significant positive correlation between the “learning interest” of the experimental group and the MAR “teaching design”, with a correlation coefficient of 0.618;
- the “learning interest” and “learning behavior” of the experimental group were significantly positively correlated, with a correlation coefficient of 0.617;
- there is a significant positive correlation between “learning interest” and “learning satisfaction” in the experimental group with a correlation coefficient of 0.694;
- “learning interest” and “learning” of the experimental group show a significant positive correlation between the results with a correlation coefficient of 0.665.
6.4. Analysis Results and Key Findings through A Verification of Research Hypothesis
7. Conclusions and Discussions
7.1. Keller’s ARCS Model of Motivational Instructional Design Theories are Applicable in the Analysis of New Digial Learning Technologies in Teaching and Provide a Useful Analysis Tool
7.2. Innovative Technologies such as Mobile Augmented Reality (MAR) Teaching Materials Increase Student’s Interest in Learning
7.3. MAR Teaching Materials Increase Students’ Motivation, in Particular Learning Behavior and Satisfaction
7.4. AR Technology Provides New Learning Experiences in terms of Understanding Learning Content Understanding Spontaneous Learning Behaviours and Increased Learning Performance
7.5. Increased Reinforcement of Students’ Motivation through AR Technologies
7.6. Increased Student Subject Knowledge in Interior Design
Author Contributions
Funding
Conflicts of Interest
Appendix A. Student Questionnaire Questions
Personal Reason- Learning Interest
- I think that learning interior design is interesting in the structure theme.
- I think that learning interior design is interesting in the dimension theme.
- I think that learning interior design is interesting in the flow theme.
- I think that learning interior design is interesting in the layout theme.
- I think that learning interior design is interesting in the symbol theme.
Learning Attitude for MAR Materials Design
- I can skillfully use the contents of the structural theme provided by MAR and feel practical.
- I can skillfully use the contents of the size theme provided by MAR and feel practical.
- I can skillfully use the content of the process theme provided by MAR and feel practical.
- I can skillfully use the contents of the layout theme provided by MAR and feel practical.
- I can skillfully use the contents of the symbol theme provided by MAR and feel practical.
Learning Behavioral Confidence
- I have confidence in learning the structure theme.
- I have confidence in learning the dimension theme.
- I have confidence in learning the flow theme.
- I have confidence in learning the layout theme.
- I have confidence in learning the symbol theme.
Learning Satisfaction
- I am satisfied with learning the structure theme.
- I am satisfied with learning the dimension theme.
- I am satisfied with learning the flow theme.
- I am satisfied with learning the layout theme.
- I am satisfied with learning the symbol theme.
Appendix B
Interior Design Learning Evaluation Table
Course Title | Design Exhibition and Marketing | ID | xxx |
---|---|---|---|
Date | |||
Unit | □ pre-test ▓ post-test | Evaluator | |
Design Exhibition Learning Evaluated Constructs | Evaluated factor explanation | Grade | |
Structure (20%) | 1. 3D Structure Learning | ||
2. Flat and 3D image translation Learning | |||
3. Interior Space Structure Learning | |||
Dimension (20%) | 1. Interior Dimension | ||
2. Furniture Dimension | |||
3. Aisle Dimension | |||
Flow (20%) | 1. Bag Shape Flow | ||
2. Tubular Shape Flow | |||
Layout (20%) | 1. Against the Wall Layout | ||
2. Layout Middle Layout | |||
3. Compartment Layout | |||
Symbol (20%) | 1. Interior Furniture Symbol | ||
2. Interior Electricity Symbol | |||
3. Interior Home Appliance Symbol |
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Element | Definition | Variable | Purpose |
---|---|---|---|
A Attention | Arouse the interest of students, maintain the attention of students, and stimulate the curiosity of students. | Learning interest | 1. Use the learning materials provided by mobile augmented reality (MAR) to arouse students’ interest in learning. 2. Observe students’ curiosity about the subject of learning, use time, and increase their concentration. |
R Relevance | Students develop relevant personal recognition based on the learning of new textbooks and past experience. | Teaching design and method | 1. Whether students are immersed in MAR to provide interior design learning. 2. Does the student affirm the learning experience with MAR as the teaching material? |
C Confidence | Arouse students’ expectations of success and positive attitudes towards students to help students build self-confidence. | Learning behavior | 1. Students must use MAR to master the steps of learning and be useful for learning. 2. Students use the confidence and concentration gained in MAR. |
S Satisfaction | Students’ satisfaction and sense of accomplishment in the experience and results of learning will enhance their self-learning effectiveness. | Learning satisfaction | 1. Use MAR to let students start self-learning, gain greater satisfaction and sense of accomplishment, and produce lasting learning interest. |
Traditional Teaching Methods | AR-Based Teaching Approach |
---|---|
1st Topic Module Teacher:
Teacher:
| Teacher:
(1) The teaching subject content is the same as traditional teaching, but AR-assisted learning is used in the structure case analysis. (2) Interior structure examples study with AR. Students:
|
2nd Topic Module Teacher:
Teacher:
| Teacher:
|
3rd Topic Module Teacher:
| Teacher:
|
4th Topic Module Teacher:
Teacher:
| Teacher:
Students:
|
5th Topic Module Teacher:
| Students:
|
Test Item | Group | Number of People | Pre-Test Average | Pre-Test Standard Deviation | Post-Measurement Average | Post-Test Standard Deviation |
---|---|---|---|---|---|---|
structure | Test group | 52 | 13.7308 | 2.12469 | 16.9423 | 1.88298 |
Control group | 48 | 13.8333 | 2.78547 | 15.1458 | 2.394 | |
dimension | Test group | 52 | 13.2308 | 2.20174 | 16.1346 | 1.69230 |
Control group | 48 | 13.6250 | 2.65478 | 15.5208 | 2.36094 | |
flow | Test group | 52 | 9.3077 | 1.66319 | 17.0000 | 1.83645 |
Control group | 48 | 9.4375 | 1.59662 | 13.3542 | 2.12873 | |
layout | Test group | 52 | 12.2692 | 2.89770 | 16.7885 | 2.32072 |
Control group | 48 | 12.5625 | 3.12101 | 13.9167 | 3.16788 | |
symbol | Test group | 52 | 11.9231 | 2.65571 | 16.0385 | 1.94998 |
Control group | 48 | 11.7083 | 2.79786 | 14.4792 | 3.11475 |
Test Item | Source | SS | df | MS | F Value | Variability Homogeneity Test Significance |
---|---|---|---|---|---|---|
structure | Both groups in pre-test stage | 0.263 | 1 | 0.263 | 0.043 | 0.836 |
594.897 | 98 | 6.070 | ||||
dimension | Both groups in pre-test stage | 3.879 | 1 | 3.879 | 0.657 | 0.420 |
395.839 | 98 | 5.903 | ||||
flow | Both groups in pre-test stage | 0.421 | 1 | 0.421 | 0.158 | 0.692 |
260.889 | 98 | 2.662 | ||||
layout | Both groups in pre-test stage | 2.147 | 1 | 2.147 | 0.237 | 0.627 |
886.043 | 98 | 9.041 | ||||
symbol | Both groups in pre-test stage | 1.151 | 1 | 1.151 | 0.155 | 0.695 |
Both groups in pre-test stage | 727.609 | 98 | 7.425 |
Test Item | Source | SS | df | MS | F value | Significance |
---|---|---|---|---|---|---|
Structure | Difference between groups | 80.554 | 1 | 80.554 | 17.828 | 0.000 *** |
442.806 | 98 | 4.518 | ||||
Dimension | Difference between groups | 9.403 | 1 | 9.403 | 2.258 | 0.136 |
408.073 | 98 | 4.164 | ||||
Flow | Difference between groups | 331.771 | 1 | 331.771 | 84.455 | 0.000 *** |
384.979 | 98 | 3.928 | ||||
Layout | Difference between groups | 205.850 | 1 | 205.850 | 27.030 | 0.000 *** |
746.340 | 98 | 7.616 | ||||
Symbol | Difference between groups | 60.688 | 1 | 60.688 | 9.151 | 0.003 ** |
649.902 | 98 | 6.632 |
Components | Number | Mean | Standard Deviation |
---|---|---|---|
Learning interest | 52 | 4.5808 | 0.20679 |
Teaching design | 52 | 4.5269 | 0.17277 |
Learning behavior | 52 | 4.5462 | 0.19449 |
Learning satisfaction | 52 | 4.5769 | 0.20447 |
Learning performance | 52 | 4.6462 | 0.17763 |
Valid N (excluded completely) | 52 |
Total Variance Explained | ||||||
---|---|---|---|---|---|---|
Initial Eigenvalue | Rotation Sums of Squared Loadings | |||||
Ingredients | Sum | Variance% | Cumulative | Sum | Variance% | Cumulative% |
Learning behavioral | 5.594 | 27.972 | 27.972 | 4.529 | 22.647 | 22.647 |
Learning interesting | 4.410 | 22.052 | 50.024 | 4.125 | 20.627 | 43.274 |
Learning satisfaction | 2.986 | 14.932 | 64.955 | 3.751 | 18.754 | 62.027 |
Teaching design | 2.391 | 11.953 | 76.908 | 2.976 | 14.881 | 76.908 |
Extraction method: principal component analysis |
Learning Interest | Teaching Design | Learning Behavior | Learning Satisfaction | Learning Effectiveness | ||
---|---|---|---|---|---|---|
Learning interest | Pearson Correlation | 1 | 0.618 (**) | 0.617 (**) | 0.694 (**) | 0.665 (**) |
Significance (two-tailed) | 0.000 | 0.000 | 0.000 | 0.000 | ||
Teaching design | Pearson Correlation | 0.618 (**) | 1 | 0.511 (**) | 0.351 (*) | 0.393 (**) |
Significance (two-tailed) | 0.000 | 0.000 | 0.011 | 0.004 | ||
Learning behavior | Pearson Correlation | 0.617 (**) | 0.511 (**) | 1 | 0.501 (**) | 0.618 (**) |
Significance (two-tailed) | 0.000 | 0.000 | 0.000 | 0.000 | ||
Learning satisfaction | Pearson Correlation | 0.694 (**) | 0.351 (*) | 0.501 (**) | 1 | 0.591 (**) |
Significance (two-tailed) | 0.000 | 0.011 | 0.000 | 0.000 | ||
Learning effectiveness | Pearson Correlation | 0.665 (**) | 0.393 (**) | 0.618 (**) | 0.591 (**) | 1 |
Significance (two-tailed) | 0.000 | 0.004 | 0.000 | 0.000 |
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Chang, Y.-S.; Hu, K.-J.; Chiang, C.-W.; Lugmayr, A. Applying Mobile Augmented Reality (AR) to Teach Interior Design Students in Layout Plans: Evaluation of Learning Effectiveness Based on the ARCS Model of Learning Motivation Theory. Sensors 2020, 20, 105. https://doi.org/10.3390/s20010105
Chang Y-S, Hu K-J, Chiang C-W, Lugmayr A. Applying Mobile Augmented Reality (AR) to Teach Interior Design Students in Layout Plans: Evaluation of Learning Effectiveness Based on the ARCS Model of Learning Motivation Theory. Sensors. 2020; 20(1):105. https://doi.org/10.3390/s20010105
Chicago/Turabian StyleChang, Yuh-Shihng, Kuo-Jui Hu, Cheng-Wei Chiang, and Artur Lugmayr. 2020. "Applying Mobile Augmented Reality (AR) to Teach Interior Design Students in Layout Plans: Evaluation of Learning Effectiveness Based on the ARCS Model of Learning Motivation Theory" Sensors 20, no. 1: 105. https://doi.org/10.3390/s20010105
APA StyleChang, Y. -S., Hu, K. -J., Chiang, C. -W., & Lugmayr, A. (2020). Applying Mobile Augmented Reality (AR) to Teach Interior Design Students in Layout Plans: Evaluation of Learning Effectiveness Based on the ARCS Model of Learning Motivation Theory. Sensors, 20(1), 105. https://doi.org/10.3390/s20010105