Unsupervised Tomato Split Anomaly Detection using Hyperspectral Imaging and Variational Autoencoders
- URL: http://arxiv.org/abs/2501.02921v1
- Date: Mon, 06 Jan 2025 11:02:52 GMT
- Title: Unsupervised Tomato Split Anomaly Detection using Hyperspectral Imaging and Variational Autoencoders
- Authors: Mahmoud Abdulsalam, Usman Zahidi, Bradley Hurst, Simon Pearson, Grzegorz Cielniak, James Brown,
- Abstract summary: A common anomaly associated with tomatoes is splitting, characterized by the development of cracks on the tomato skin.
We use a tailored variational autoencoder (VAE) with hyperspectral input to detect this type of anomaly.
Our findings indicate that the 530nm - 550nm range is suitable for identifying tomato dry splits.
- Score: 5.2502683871549305
- License:
- Abstract: Tomato anomalies/damages pose a significant challenge in greenhouse farming. While this method of cultivation benefits from efficient resource utilization, anomalies can significantly degrade the quality of farm produce. A common anomaly associated with tomatoes is splitting, characterized by the development of cracks on the tomato skin, which degrades its quality. Detecting this type of anomaly is challenging due to dynamic variations in appearance and sizes, compounded by dataset scarcity. We address this problem in an unsupervised manner by utilizing a tailored variational autoencoder (VAE) with hyperspectral input. Preliminary analysis of the dataset enabled us to select the optimal range of wavelengths for detecting this anomaly. Our findings indicate that the 530nm - 550nm range is suitable for identifying tomato dry splits. The analysis on reconstruction loss allow us to not only detect the anomalies but also to some degree estimate the anomalous regions.
Related papers
- Synthetic Data Generation for Anomaly Detection on Table Grapes [2.935752166220662]
Early detection of illnesses and pest infestations in fruit cultivation is critical for maintaining yield quality and plant health.
Computer vision and robotics are increasingly employed for the automatic detection of such issues.
One solution to this scarcity is the generation of synthetic high-quality anomalous samples.
arXiv Detail & Related papers (2024-12-17T14:29:12Z) - AnomalyCD: A benchmark for Earth anomaly change detection with high-resolution and time-series observations [12.35831157851407]
AnomalyCD technique learns to identify anomalous changes by learning from the historical normal change pattern.
AnomalyCDM is designed as a two-stage workflow to enhance the efficiency, and has the ability to process the unseen images directly.
arXiv Detail & Related papers (2024-09-09T14:47:57Z) - Generating and Reweighting Dense Contrastive Patterns for Unsupervised
Anomaly Detection [59.34318192698142]
We introduce a prior-less anomaly generation paradigm and develop an innovative unsupervised anomaly detection framework named GRAD.
PatchDiff effectively expose various types of anomaly patterns.
experiments on both MVTec AD and MVTec LOCO datasets also support the aforementioned observation.
arXiv Detail & Related papers (2023-12-26T07:08:06Z) - AnomalyDiffusion: Few-Shot Anomaly Image Generation with Diffusion Model [59.08735812631131]
Anomaly inspection plays an important role in industrial manufacture.
Existing anomaly inspection methods are limited in their performance due to insufficient anomaly data.
We propose AnomalyDiffusion, a novel diffusion-based few-shot anomaly generation model.
arXiv Detail & Related papers (2023-12-10T05:13:40Z) - Unraveling the "Anomaly" in Time Series Anomaly Detection: A
Self-supervised Tri-domain Solution [89.16750999704969]
Anomaly labels hinder traditional supervised models in time series anomaly detection.
Various SOTA deep learning techniques, such as self-supervised learning, have been introduced to tackle this issue.
We propose a novel self-supervised learning based Tri-domain Anomaly Detector (TriAD)
arXiv Detail & Related papers (2023-11-19T05:37:18Z) - MadSGM: Multivariate Anomaly Detection with Score-based Generative
Models [22.296610226476542]
We present a time-series anomaly detector based on score-based generative models, called MadSGM.
Experiments on five real-world benchmark datasets illustrate that MadSGM achieves the most robust and accurate predictions.
arXiv Detail & Related papers (2023-08-29T07:04:50Z) - Diversity-Measurable Anomaly Detection [106.07413438216416]
We propose Diversity-Measurable Anomaly Detection (DMAD) framework to enhance reconstruction diversity.
PDM essentially decouples deformation from embedding and makes the final anomaly score more reliable.
arXiv Detail & Related papers (2023-03-09T05:52:42Z) - Prototypical Residual Networks for Anomaly Detection and Localization [80.5730594002466]
We propose a framework called Prototypical Residual Network (PRN)
PRN learns feature residuals of varying scales and sizes between anomalous and normal patterns to accurately reconstruct the segmentation maps of anomalous regions.
We present a variety of anomaly generation strategies that consider both seen and unseen appearance variance to enlarge and diversify anomalies.
arXiv Detail & Related papers (2022-12-05T05:03:46Z) - Are we certain it's anomalous? [57.729669157989235]
Anomaly detection in time series is a complex task since anomalies are rare due to highly non-linear temporal correlations.
Here we propose the novel use of Hyperbolic uncertainty for Anomaly Detection (HypAD)
HypAD learns self-supervisedly to reconstruct the input signal.
arXiv Detail & Related papers (2022-11-16T21:31:39Z) - Hyperspectral Anomaly Change Detection Based on Auto-encoder [40.32592332449066]
Hyperspectral anomaly change detection (HACD) helps to find those small but important anomaly changes between hyperspectral images (HSI)
In this paper, we propose an original HACD algorithm based on auto-encoder (ACDA) to give a nonlinear solution.
The experiments results on public "Viareggio 2013" datasets demonstrate the efficiency and superiority over traditional methods.
arXiv Detail & Related papers (2020-10-27T08:07:08Z)
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.