intern:construction_har
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intern:construction_har [2022/08/11 02:17] – kenzjk | intern:construction_har [2022/08/13 10:28] (current) – kenzjk | ||
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==== 2. Reading (can make subsections for notes) ==== | ==== 2. Reading (can make subsections for notes) ==== | ||
// Human Activity Recognition using Wearable Sensors by Deep Convolutional Neural Networks // | // Human Activity Recognition using Wearable Sensors by Deep Convolutional Neural Networks // | ||
- | > SVM method has a relatively high accuracy but a relatively high computational cost. | + | * SVM method has a relatively high accuracy but a relatively high computational cost. |
- | > Feature Selection method has a relatively low computational cost but a significantly low accuracy. | + | |
- | > A trade-off exists between accuracy and computational cost. | + | |
- | > DCNN+ and DCNN methods achieve a good balance between the two (accuracy and efficiency). | + | |
====3. Coding (w/ description) ==== | ====3. Coding (w/ description) ==== | ||
==== 4. Research Progress (update every other day) ==== | ==== 4. Research Progress (update every other day) ==== | ||
- | > Aug/02/22 | + | __Aug/02/22__ |
* Learned about the basics of Human Activity Recognition and gathered that 3D motion sensors often utilized accelerometers and gyroscopes send motion signals to a laptop with code ready to interpret the signals to classify the motion. | * Learned about the basics of Human Activity Recognition and gathered that 3D motion sensors often utilized accelerometers and gyroscopes send motion signals to a laptop with code ready to interpret the signals to classify the motion. | ||
* Research on Xsens and the different modules of sensors it offered was done. | * Research on Xsens and the different modules of sensors it offered was done. | ||
__Aug/ | __Aug/ | ||
- | * Looked into the modules MTw Awinda and Xsens DOT. | + | * Looked into the modules MTw Awinda |
* Created a document detailing the differences between the two to aid my professor in deciding which one to purchase. | * Created a document detailing the differences between the two to aid my professor in deciding which one to purchase. | ||
__Aug/ | __Aug/ | ||
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__Aug/ | __Aug/ | ||
* Studied // Human Activity Recognition using Wearable Sensors by Deep Convolutional Neural Networks // and discussed this paper with my professor. | * Studied // Human Activity Recognition using Wearable Sensors by Deep Convolutional Neural Networks // and discussed this paper with my professor. | ||
+ | * Did research and watched lecture videos on common libraries implemented by machine learning programs, such as SciKit-Learn (https:// | ||
__Aug/ | __Aug/ | ||
- | * Did research on some common libraries implemented by machine learning programs, such as SciKit-Learn, | ||
* Coded an iris flower-distinguishing program using Sklearn. | * Coded an iris flower-distinguishing program using Sklearn. | ||
* Began to code and train a standing-or-walking-distinguishing program as a first step to our final program to be implemented at construction sites. | * Began to code and train a standing-or-walking-distinguishing program as a first step to our final program to be implemented at construction sites. | ||
__Aug/ | __Aug/ | ||
+ | * Successfully read in all the data from the UCI HAR Dataset (https:// | ||
+ | * Studied an open source HAR algorithm on GitHub (https:// | ||
__Aug/ | __Aug/ | ||
+ | * Successfully trained my program using the UCI HAR Dataset, but prediction accuracy was not ideal. | ||
+ | * Experimented with common HAR classifiers seen on GitHub to try to find better prediction accuracy. | ||
- | ==== 4.1 Final Report PPT ==== | + | ==== 5. Final Report PPT ==== |
intern/construction_har.1660198644.txt.gz · Last modified: 2022/08/11 02:17 by kenzjk