Search
2025-02-25
Leveraging multi-round learning and noisy labeled images from online sources for durian leaf disease and pest classification

January 18, 2025 | Transactions on CIT |

Researchers from Chiang Mai University and Prince of Songkla University in Thailand conducted a study to address challenges in identifying and diagnosing leaf diseases and pests affecting durian trees. Durian is an important agricultural export for Southeast Asian countries, but its productivity and crop quality are often reduced due to disease and pest infestations, resulting in significant economic losses.

The study focused on using deep learning techniques to classify visual symptoms of diseases and pests from images of durian leaves. However, the development of a high-performing deep neural network requires a substantial number of accurately labeled training images, which are difficult and costly to obtain. To overcome this limitation, the researchers proposed a method to supplement the limited number of expert-labeled images with noisily labeled images gathered from the Internet.

A sample selection framework was introduced to identify and choose useful noisy images to augment the training set. These images were used in a multi-round learning scheme, where each learning round improved the performance of the model. The results showed that incorporating noisy images provided complementary information, increasing prediction accuracy by 20% in one of the learning rounds. The study demonstrates the potential of combining noisy and ground-truth data to enhance disease and pest identification for improved crop management in durian production.

Read more

Viewed Articles
Leveraging multi-round learning and noisy labeled images from online sources for durian leaf disease and pest classification
January 18, 2025 | Transactions on CIT |Researchers from Chiang Mai University and Prince of Songkla University in Thailand conducted a study to address challenges in identifying and diagnosing leaf d
Feb 25, 2025
Read More
Sorghum cookies fortified with <span style="font-style:italic;">Garcinia mangostana </span>peel extract: Formulation, characterization, and evaluation of antioxidant and antidiabetic activity
January 06, 2025 | Bioactive Carbohydrates and Dietary Fibre |The study conducted by the National Research and Innovation Agency (BRIN), Indonesia, addressed the growing health concerns associated wit
Residue dynamics of tebuconazole in mango (<span style="font-style:italic;">Mangifera indica</span>): a study of persistence and dissipation using GC–MS/MS
September 29, 2025 | Food Additives & Contaminants: Part A | The study, conducted by Mahatma Phule Krishi Vidyapeeth in India, examined the dissipation pattern of tebuconazole, a commonly used fungici
2025.11.27
Predicting climate change impacts on sub-tropical fruit suitability using MaxEnt: A regional study from Southern Türkiye
June 14, 2025 | Sustainability |The study, conducted by Mersin University in Türkiye, evaluated the potential of avocado and pitaya cultivation under present and future climate scenarios in the Medite
Development of nondestructive technology for estimating guava (<span style="font-style:italic;">Psidium guajava</span> L.) ripeness
January 16, 2026 | Applied Fruit Science | This study conducted by the ICAR–Indian Agricultural Research Institute, India, addressed the need for rapid and nondestructive methods to assess fruit ripen
2026.02.26
Bioactive species associated with rambutan (<span style="font-style:italic;">Nephelium lappaceum </span>L.) and their influence on soil chemical and microbiological properties
October 02, 2024 | Agro Productividad | This study conducted by Universidad Autónoma de Chiapas examined how selected bioactive plant species influence the chemical and microbiological properties of s
2026.01.27
TOP