Accurate counting of Amorphophallus konjac (Konjac) plants can offer valuable insights for agricultural management and yield prediction. While current studies have primarily focused on detecting and counting crop plants during the early stages of low coverage, there is limited investigation into the later stages of high coverage, which could impact the accuracy of forecasting yield. High canopy coverage and severe occlusion in later stages pose significant challenges for plant detection and counting. Therefore, this study evaluated the performance of the Count Crops tool and a deep learning (DL) model derived from early-stage unmanned aerial vehicle (UAV) imagery in detecting and counting Konjac plants during the high-coverage growth stage. Additionally, the study proposed an approach that integrates the DL model with Konjac location information from both early-stage and high canopy coverage stage imagery to improve the accuracy of recognizing Konjac plants during the high canopy coverage stage. The results indicated that the Count Crops tool outperformed the DL model constructed solely from early-stage imagery in detecting and counting Konjac plants during the high-coverage period. However, given the single stem and erect growth characteristics of Konjac, incorporating the DL model with the location information of the Konjac plants achieved the highest accuracy (Precision = 98.7%, Recall = 86.7%, F1-score = 92.3%). Our findings indicate that combining DL detection results from the early growth stages of Konjac, along with plant positional information from both growth stages, not only significantly improved the accuracy of detecting and counting plants but also saved time on annotating and training DL samples in the later stages. This study introduces an innovative approach for detecting and counting Konjac plants during high-coverage periods, providing a new perspective for recognizing and counting other crop plants at high-overlapping growth stages.
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http://dx.doi.org/10.1038/s41598-025-91364-7 | DOI Listing |
Front Plant Sci
February 2025
Key Laboratory of Basic Pharmacology and Joint International Research Laboratory of Ethnomedicine of Ministry of Education, Zunyi Medical University, Zunyi, China.
is a perennial plant native to Southeast Asia, renowned for its edible corms and rich nutritional value. The bioactive component, konjac glucomannan (KGM), has garnered significant attention due to its broad applications. This review aims to provide a comprehensive overview of the traditional uses, chemical and physical properties, and modern health applications of KGM.
View Article and Find Full Text PDFFood Res Int
February 2025
National University of Singapore (Suzhou) Research Institute, 377 Linquan Street, Suzhou, Jiangsu 215123, China; Department of Food Science and Technology, National University of Singapore, 2 Science Drive 2, Singapore City 117542, Singapore. Electronic address:
Alcogel has been increasingly applied in foods, cosmetics, and pharmaceutical industries. However, their application is limited by the lack of efficient biomacromolecule-based gelators. Herein, we present our discovery of secalin, a prolamin from rye, combined with konjac glucomannan (KGM) as novel food-grade gelators.
View Article and Find Full Text PDFFront Plant Sci
February 2025
Laboratory of Life Sciences, College of Life Sciences, Northwest A&F University, Xianyang, Shaanxi, China.
Introduction: , a perennial herb in the family, is a valuable cash crop known for its high production of konjac glucomannan and high disease resistance.
Methods: In this study, we present a high-quality, chromosome-scale genome assembly of using a combination of PacBio HiFi sequencing, DNBSEQ short-read sequencing, and Hi-C technology. To elucidate the molecular mechanisms underlying southern blight resistance, we performed an integrated analysis of transcriptomic and metabolomic profiles across three infection stages of .
Sci Rep
February 2025
College of Big Data and Intelligent Engineering, Southwest Forestry University, Kunming, 650223, Yunnan, China.
Accurate counting of Amorphophallus konjac (Konjac) plants can offer valuable insights for agricultural management and yield prediction. While current studies have primarily focused on detecting and counting crop plants during the early stages of low coverage, there is limited investigation into the later stages of high coverage, which could impact the accuracy of forecasting yield. High canopy coverage and severe occlusion in later stages pose significant challenges for plant detection and counting.
View Article and Find Full Text PDFPlant Dis
February 2025
Northwest Institute of Eco-Environment and Resources, Chinese Academy of Science, 320 Donggang West Rd., Lanzhou, Gansu, China, LANZHOU, Gansu, China, 730000;
Radix Codonopsis pilosulae is a perennial herb of the genus Codonopsis, family Campanulaceae, and its dry root is frequently used in traditional Chinese medicine for hundreds of years for replenishing qi deficiency, strengthening the immune system, improving poor gastrointestinal function, decreasing blood pressure, etc. (He et al. 2015).
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