Early Detection of Bark Beetle Attack Using Remote Sensing and Machine
Learning: A Review
- URL: http://arxiv.org/abs/2210.03829v3
- Date: Fri, 24 Nov 2023 19:27:25 GMT
- Title: Early Detection of Bark Beetle Attack Using Remote Sensing and Machine
Learning: A Review
- Authors: Seyed Mojtaba Marvasti-Zadeh, Devin Goodsman, Nilanjan Ray, Nadir
Erbilgin
- Abstract summary: This review encompasses all RS systems and emphasizes ML/DL methods to investigate their strengths and weaknesses.
We parse existing literature based on multi- or hyper-spectral analyses and distill their knowledge based on: bark beetle species & attack phases, study regions, RS platforms & sensors, spectral/spatial/temporal resolutions, spectral signatures, spectral vegetation indices (SVIs)
Although DL-based methods and the random forest (RF) algorithm showed promising results, they still have limited effectiveness and high uncertainties.
- Score: 7.715886336430544
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper provides a comprehensive review of past and current advances in
the early detection of bark beetle-induced tree mortality from three primary
perspectives: bark beetle & host interactions, RS, and ML/DL. In contrast to
prior efforts, this review encompasses all RS systems and emphasizes ML/DL
methods to investigate their strengths and weaknesses. We parse existing
literature based on multi- or hyper-spectral analyses and distill their
knowledge based on: bark beetle species & attack phases with a primary emphasis
on early stages of attacks, host trees, study regions, RS platforms & sensors,
spectral/spatial/temporal resolutions, spectral signatures, spectral vegetation
indices (SVIs), ML approaches, learning schemes, task categories, models,
algorithms, classes/clusters, features, and DL networks & architectures.
Although DL-based methods and the random forest (RF) algorithm showed promising
results, highlighting their potential to detect subtle changes across visible,
thermal, and short-wave infrared (SWIR) spectral regions, they still have
limited effectiveness and high uncertainties. To inspire novel solutions to
these shortcomings, we delve into the principal challenges & opportunities from
different perspectives, enabling a deeper understanding of the current state of
research and guiding future research directions.
Related papers
- Survey on AI-Generated Media Detection: From Non-MLLM to MLLM [51.91311158085973]
Methods for detecting AI-generated media have evolved rapidly.
General-purpose detectors based on MLLMs integrate authenticity verification, explainability, and localization capabilities.
Ethical and security considerations have emerged as critical global concerns.
arXiv Detail & Related papers (2025-02-07T12:18:20Z) - Towards Within-Class Variation in Alzheimer's Disease Detection from Spontaneous Speech [60.08015780474457]
Alzheimer's Disease (AD) detection has emerged as a promising research area that employs machine learning classification models.
We identify within-class variation as a critical challenge in AD detection: individuals with AD exhibit a spectrum of cognitive impairments.
We propose two novel methods: Soft Target Distillation (SoTD) and Instance-level Re-balancing (InRe), targeting two problems respectively.
arXiv Detail & Related papers (2024-09-22T02:06:05Z) - Benchmarking Reliability of Deep Learning Models for Pathological Gait Classification [2.1548132286330453]
Researchers have recently sought to leverage advances in machine learning algorithms to detect symptoms of altered gait.
This paper analyzes existing approaches to identify gaps inhibiting translation.
We propose our strong baseline called Asynchronous Multi-Stream Graph Convolutional Network (AMS-GCN) that can reliably differentiate multiple categories of pathological gaits.
arXiv Detail & Related papers (2024-09-20T16:47:45Z) - From Linguistic Giants to Sensory Maestros: A Survey on Cross-Modal Reasoning with Large Language Models [56.9134620424985]
Cross-modal reasoning (CMR) is increasingly recognized as a crucial capability in the progression toward more sophisticated artificial intelligence systems.
The recent trend of deploying Large Language Models (LLMs) to tackle CMR tasks has marked a new mainstream of approaches for enhancing their effectiveness.
This survey offers a nuanced exposition of current methodologies applied in CMR using LLMs, classifying these into a detailed three-tiered taxonomy.
arXiv Detail & Related papers (2024-09-19T02:51:54Z) - Investigating Coverage Criteria in Large Language Models: An In-Depth Study Through Jailbreak Attacks [10.909463767558023]
We propose an innovative approach for the real-time detection of jailbreak attacks by utilizing neural activation features.
Our method holds promise for future systems integrating LLMs, offering robust real-time detection capabilities.
arXiv Detail & Related papers (2024-08-27T17:14:21Z) - Sugarcane Health Monitoring With Satellite Spectroscopy and Machine Learning: A Review [3.006016887654771]
This review delves into previously unexplored and under-explored areas in sugarcane health monitoring and disease/pest detection using satellite-based spectroscopy and Machine Learning (ML)
It discusses key considerations in system development, including relevant satellites, vegetation indices, ML methods, factors influencing sugarcane reflectance, optimal growth conditions, common diseases, and traditional detection methods.
arXiv Detail & Related papers (2024-02-13T01:12:39Z) - Evaluation of the potential of Near Infrared Hyperspectral Imaging for
monitoring the invasive brown marmorated stink bug [53.682955739083056]
The brown marmorated stink bug (BMSB), Halyomorpha halys, is an invasive insect pest of global importance that damages several crops.
The present study consists in a preliminary evaluation at the laboratory level of Near Infrared Hyperspectral Imaging (NIR-HSI) as a possible technology to detect BMSB specimens.
arXiv Detail & Related papers (2023-01-19T11:37:20Z) - Deep Learning meets Liveness Detection: Recent Advancements and
Challenges [3.2011056280404637]
We present a comprehensive survey on the literature related to deep-feature-based FAS methods since 2017.
We cover predominant public datasets for FAS in chronological order, their evolutional progress, and the evaluation criteria.
arXiv Detail & Related papers (2021-12-29T19:24:58Z) - Unsupervised deep learning techniques for powdery mildew recognition
based on multispectral imaging [63.62764375279861]
This paper presents a deep learning approach to automatically recognize powdery mildew on cucumber leaves.
We focus on unsupervised deep learning techniques applied to multispectral imaging data.
We propose the use of autoencoder architectures to investigate two strategies for disease detection.
arXiv Detail & Related papers (2021-12-20T13:29:13Z) - A Novel CropdocNet for Automated Potato Late Blight Disease Detection
from the Unmanned Aerial Vehicle-based Hyperspectral Imagery [3.3283767441645478]
Late blight disease is one of the most destructive diseases in potato crop, leading to serious yield losses globally.
Current farm practices in crop disease diagnosis are based on manual visual inspection, which is costly, time consuming, subject to individual bias.
Recent advances in imaging sensors (e.g. RGB, multiple spectral and hyperspectral cameras), remote sensing and machine learning offer the opportunity to address this challenge.
arXiv Detail & Related papers (2021-07-28T11:18:48Z) - Deep Learning for Anomaly Detection: A Review [150.9270911031327]
This paper surveys the research of deep anomaly detection with a comprehensive taxonomy, covering advancements in three high-level categories and 11 fine-grained categories of the methods.
We review their key intuitions, objective functions, underlying assumptions, advantages and disadvantages, and discuss how they address the aforementioned challenges.
arXiv Detail & Related papers (2020-07-06T02:21:16Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.