Communications in computer and information science, Journal Year: 2024, Volume and Issue: unknown, P. 401 - 413
Published: Nov. 11, 2024
Language: Английский
Communications in computer and information science, Journal Year: 2024, Volume and Issue: unknown, P. 401 - 413
Published: Nov. 11, 2024
Language: Английский
Ecological Informatics, Journal Year: 2024, Volume and Issue: 82, P. 102683 - 102683
Published: June 12, 2024
Poisonous plants are the third largest category of poisons known globally, which pose a risk poisoning and death to humans. Currently, identification medicinal poisonous is done by humans using experimental methods, not accurate associated with many errors, also use laboratory methods requires experts this method very costly time-consuming. Therefore, distinguishing between important emerging, non-destructive, fast such as computer vision artificial intelligence. In study, we propose robust generalized model spatial attention (SA) channel (CA) modules for classification different plants. A dataset containing 900 confirmed images three plant classes (oregano, weed) was used. The mechanisms enhance efficiency deep learning (DL) networks allowing them precisely focus on all relevant input elements. order performance proposed model, CA implemented based four pooling operations including global average pooling-based (GAP-CA), mixed (Mixed-CA), gated (Gated-CA), tree (Tree-CA) operations. results showed that DL Tree-CA had promising outperformed other state-of-the-art models, achieving values 99.63%, 99.38%, 99.52%, 99.74%, 99.42%, accuracy, precision, recall, specificity, F1-score, respectively. findings support our model's success in identifying from similar Recent advancements computer-based technologies intelligence enable automatic detection plants, revolutionizing traditional methods.
Language: Английский
Citations
8Ecological Informatics, Journal Year: 2024, Volume and Issue: 81, P. 102611 - 102611
Published: April 22, 2024
This work proposes a novel hierarchical classification framework designed to categorize hundred Indian medicinal plant species. The innovation lies in introducing comprehensive feature representation by integrating convolutional features with geometric, texture, shape, and multispectral for tasks. In this study, two-level model is proposed address the challenges of inter-class similarity intra-class variations. first level classifies 100 species into 11 groups based on visual similarities among plants. At two, specific containing each group are predicted using Random Forest classifier. evaluation performed at two levels analyze effectiveness model. performance analysis compares individual types against composite Performance also evaluated that demonstrate high between classes variations separately. Furthermore, generality tested self-created datasets-RTL80 RTP40, requiring more than 300 man-hours collect. Experimental results promising accuracy 94.54% GSL100 leaf dataset 75.46% RTL80 RTP40 real-time datasets reflecting superiority over state-of-the-art methods.
Language: Английский
Citations
6Ecological Informatics, Journal Year: 2024, Volume and Issue: 82, P. 102730 - 102730
Published: July 20, 2024
Language: Английский
Citations
6Scientia Horticulturae, Journal Year: 2024, Volume and Issue: 327, P. 112821 - 112821
Published: Jan. 6, 2024
Language: Английский
Citations
5Ecological Informatics, Journal Year: 2025, Volume and Issue: unknown, P. 102998 - 102998
Published: Jan. 1, 2025
Language: Английский
Citations
0Engineering Science and Technology an International Journal, Journal Year: 2025, Volume and Issue: 61, P. 101940 - 101940
Published: Jan. 1, 2025
Language: Английский
Citations
0Journal of the Indian Academy of Wood Science, Journal Year: 2025, Volume and Issue: unknown
Published: Jan. 17, 2025
Language: Английский
Citations
0Ecological Informatics, Journal Year: 2025, Volume and Issue: unknown, P. 103029 - 103029
Published: Jan. 1, 2025
Language: Английский
Citations
0Plant Cell & Environment, Journal Year: 2025, Volume and Issue: unknown
Published: Jan. 27, 2025
ABSTRACT The generation of spectral libraries using hyperspectral data allows for the capture detailed signatures, uncovering subtle variations in plant physiology, biochemistry, and growth stages, marking a significant advancement over traditional land cover classification methods. These enable improved forest accuracy more precise differentiation species functional types (PFTs), thereby establishing sensing as critical tool PFT classification. This study aims to advance monitoring PFTs Shoolpaneshwar wildlife sanctuary, Gujarat, India Airborne Visible/Infrared Imaging Spectrometer‐Next Generation (AVIRIS‐NG) machine learning techniques. A comprehensive library was developed, encompassing from 130 species, with focus on their features support were collected AVIRIS‐NG imaging ASD Handheld Spectroradiometer, capturing wide range wavelengths (400–1600 nm) encompass key physiological biochemical traits plants. Plant grouped into five distinct Fuzzy C‐means clustering. Key features, including band reflectance, vegetation indices, derivative/continuum properties, identified through combination ISODATA clustering Jeffries‐Matusita (JM) distance analysis, enabling effective feature selection To assess utility library, three advanced classifiers—Parzen Window (PW), Gradient Boosted Machine (GBM), Stochastic Descent (SGD)—were rigorously evaluated. GBM classifier achieved highest accuracy, an overall (OAA) 0.94 Kappa coefficient 0.93 across PFTs.
Language: Английский
Citations
0Lecture notes in networks and systems, Journal Year: 2025, Volume and Issue: unknown, P. 363 - 374
Published: Jan. 1, 2025
Language: Английский
Citations
0