Common garbage classification using mobilenet
Garbage classification is the first step in waste segregation, recycling, or reuse. MobileNet was used to generate a model that classifies common trash according to the following categories: glass, paper, cardboard, plastic, metal, and other trash. A dataset of 2527 trash images in.jpg extension was...
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oai:animorepository.dlsu.edu.ph:faculty_research-27152021-07-19T01:18:16Z Common garbage classification using mobilenet Rabano, Stephenn L. Cabatuan, Melvin K. Sybingco, Edwin Dadios, Elmer P. Calilung, Edwin J. Garbage classification is the first step in waste segregation, recycling, or reuse. MobileNet was used to generate a model that classifies common trash according to the following categories: glass, paper, cardboard, plastic, metal, and other trash. A dataset of 2527 trash images in.jpg extension was used for the training. The model used transfer learning from a model trained on the ImageNet Large Visual Recognition Challenge dataset. The TensorFlow for Poets git repository was cloned as a working directory to retrain the MobileNet model in 500 steps. The resulting baseline model, with a final test accuracy of 87.2% was optimized and quantized. In the Andoid app development, the optimized model (with 89.34% confidence) is preferred over the quantized model (with 1.47% confidence) based on the test using a plastic image. The model app was successfully installed in a Samsung Galaxy S6 Edge}+textbf{{mobile phone. The installed mobile app successfully identified a cardboard material in an image with a}{cardboard container. It is recommended to rerun the training using more steps as this may improve the quantized model performance since a quantized model is fit for mobile devices than models with no quantization. © 2018 IEEE. 2018-07-02T07:00:00Z text text/html https://animorepository.dlsu.edu.ph/faculty_research/1716 https://animorepository.dlsu.edu.ph/context/faculty_research/article/2715/type/native/viewcontent Faculty Research Work Animo Repository Refuse and refuse disposal Androids Smartphones Image processing Samsung Galaxy S6 Edge+ Electrical and Electronics Systems and Communications |
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Refuse and refuse disposal Androids Smartphones Image processing Samsung Galaxy S6 Edge+ Electrical and Electronics Systems and Communications Rabano, Stephenn L. Cabatuan, Melvin K. Sybingco, Edwin Dadios, Elmer P. Calilung, Edwin J. Common garbage classification using mobilenet |
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Garbage classification is the first step in waste segregation, recycling, or reuse. MobileNet was used to generate a model that classifies common trash according to the following categories: glass, paper, cardboard, plastic, metal, and other trash. A dataset of 2527 trash images in.jpg extension was used for the training. The model used transfer learning from a model trained on the ImageNet Large Visual Recognition Challenge dataset. The TensorFlow for Poets git repository was cloned as a working directory to retrain the MobileNet model in 500 steps. The resulting baseline model, with a final test accuracy of 87.2% was optimized and quantized. In the Andoid app development, the optimized model (with 89.34% confidence) is preferred over the quantized model (with 1.47% confidence) based on the test using a plastic image. The model app was successfully installed in a Samsung Galaxy S6 Edge}+textbf{{mobile phone. The installed mobile app successfully identified a cardboard material in an image with a}{cardboard container. It is recommended to rerun the training using more steps as this may improve the quantized model performance since a quantized model is fit for mobile devices than models with no quantization. © 2018 IEEE. |
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Rabano, Stephenn L. Cabatuan, Melvin K. Sybingco, Edwin Dadios, Elmer P. Calilung, Edwin J. |
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Rabano, Stephenn L. Cabatuan, Melvin K. Sybingco, Edwin Dadios, Elmer P. Calilung, Edwin J. |
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Rabano, Stephenn L. |
title |
Common garbage classification using mobilenet |
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Common garbage classification using mobilenet |
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Common garbage classification using mobilenet |
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Common garbage classification using mobilenet |
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Common garbage classification using mobilenet |
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common garbage classification using mobilenet |
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Animo Repository |
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2018 |
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https://animorepository.dlsu.edu.ph/faculty_research/1716 https://animorepository.dlsu.edu.ph/context/faculty_research/article/2715/type/native/viewcontent |
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