AuToDiDAC: Automated tool for disease detection and assessment for cacao black pod rot
Pest control strategies for crop diseases highly depend on visual inspection to assess the severity of the infection, which usually lead to inconsistencies: either over or under assessment. These inconsistencies could be attributed to the limitations of humans to perceive small differences. A more p...
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oai:animorepository.dlsu.edu.ph:faculty_research-33302022-11-08T03:25:16Z AuToDiDAC: Automated tool for disease detection and assessment for cacao black pod rot Tan, Daniel Stanley Leong, Robert Neil F. Laguna, Ann Franchesca B. Ngo, Courtney Anne M. Lao, Angelyn Amalin, Divina M. Alvindia, Dionisio G. Pest control strategies for crop diseases highly depend on visual inspection to assess the severity of the infection, which usually lead to inconsistencies: either over or under assessment. These inconsistencies could be attributed to the limitations of humans to perceive small differences. A more precise disease assessment is needed for better pest management decision, which will result to a more efficient utilization and allocation of resources for farm inputs. This translates to a better income for cacao farmers. This paper introduces a mobile application named AuToDiDAC or Automated Tool for Disease Detection and Assessment for Cacao Black Pod Rot (BPR). AuToDiDAC automatically detects, separates, and assesses the infection level of BPR in cacao through image processing and machine learning techniques. It gives the farmers the capacity to objectively monitor and report the infection level of the BPR compared to the common visual rating for plant disease level of infection. Pixel-level accuracy test of the tool showed an average of 84% accuracy on an independent test set of ten cacao pod images. © 2017 2018-01-01T08:00:00Z text text/html https://animorepository.dlsu.edu.ph/faculty_research/2331 https://animorepository.dlsu.edu.ph/context/faculty_research/article/3330/type/native/viewcontent Faculty Research Work Animo Repository Phytophthora pod rot of cacao Cacao—Diseases and pests Computer Sciences |
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Phytophthora pod rot of cacao Cacao—Diseases and pests Computer Sciences Tan, Daniel Stanley Leong, Robert Neil F. Laguna, Ann Franchesca B. Ngo, Courtney Anne M. Lao, Angelyn Amalin, Divina M. Alvindia, Dionisio G. AuToDiDAC: Automated tool for disease detection and assessment for cacao black pod rot |
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Pest control strategies for crop diseases highly depend on visual inspection to assess the severity of the infection, which usually lead to inconsistencies: either over or under assessment. These inconsistencies could be attributed to the limitations of humans to perceive small differences. A more precise disease assessment is needed for better pest management decision, which will result to a more efficient utilization and allocation of resources for farm inputs. This translates to a better income for cacao farmers. This paper introduces a mobile application named AuToDiDAC or Automated Tool for Disease Detection and Assessment for Cacao Black Pod Rot (BPR). AuToDiDAC automatically detects, separates, and assesses the infection level of BPR in cacao through image processing and machine learning techniques. It gives the farmers the capacity to objectively monitor and report the infection level of the BPR compared to the common visual rating for plant disease level of infection. Pixel-level accuracy test of the tool showed an average of 84% accuracy on an independent test set of ten cacao pod images. © 2017 |
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Tan, Daniel Stanley Leong, Robert Neil F. Laguna, Ann Franchesca B. Ngo, Courtney Anne M. Lao, Angelyn Amalin, Divina M. Alvindia, Dionisio G. |
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Tan, Daniel Stanley Leong, Robert Neil F. Laguna, Ann Franchesca B. Ngo, Courtney Anne M. Lao, Angelyn Amalin, Divina M. Alvindia, Dionisio G. |
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Tan, Daniel Stanley |
title |
AuToDiDAC: Automated tool for disease detection and assessment for cacao black pod rot |
title_short |
AuToDiDAC: Automated tool for disease detection and assessment for cacao black pod rot |
title_full |
AuToDiDAC: Automated tool for disease detection and assessment for cacao black pod rot |
title_fullStr |
AuToDiDAC: Automated tool for disease detection and assessment for cacao black pod rot |
title_full_unstemmed |
AuToDiDAC: Automated tool for disease detection and assessment for cacao black pod rot |
title_sort |
autodidac: automated tool for disease detection and assessment for cacao black pod rot |
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Animo Repository |
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2018 |
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https://animorepository.dlsu.edu.ph/faculty_research/2331 https://animorepository.dlsu.edu.ph/context/faculty_research/article/3330/type/native/viewcontent |
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