InspectionV3: Enhancing Tobacco Quality Assessment with Deep Convolutional Neural Networks for Automated Workshop Management
- URL: http://arxiv.org/abs/2505.16485v1
- Date: Thu, 22 May 2025 10:11:50 GMT
- Title: InspectionV3: Enhancing Tobacco Quality Assessment with Deep Convolutional Neural Networks for Automated Workshop Management
- Authors: Yao Wei, Muhammad Usman, Hazrat Bilal,
- Abstract summary: InspectionV3 is an integrated solution for automated flue-cured tobacco grading.<n>It uses a customized deep convolutional neural network architecture.<n>Metrics demonstrate 97% accuracy, 95% precision and recall, 96% F1-score and AUC, 95% specificity; validating real-world viability.
- Score: 5.180338364876145
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The problems that tobacco workshops encounter include poor curing, inconsistencies in supplies, irregular scheduling, and a lack of oversight, all of which drive up expenses and worse quality. Large quantities make manual examination costly, sluggish, and unreliable. Deep convolutional neural networks have recently made strides in capabilities that transcend those of conventional methods. To effectively enhance them, nevertheless, extensive customization is needed to account for subtle variations in tobacco grade. This study introduces InspectionV3, an integrated solution for automated flue-cured tobacco grading that makes use of a customized deep convolutional neural network architecture. A scope that covers color, maturity, and curing subtleties is established via a labelled dataset consisting of 21,113 images spanning 20 quality classes. Expert annotators performed preprocessing on the tobacco leaf images, including cleaning, labelling, and augmentation. Multi-layer CNN factors use batch normalization to describe domain properties like as permeability and moisture spots, and so account for the subtleties of the workshop. Its expertise lies in converting visual patterns into useful information for enhancing workflow. Fast notifications are made possible by real-time, on-the-spot grading that matches human expertise. Images-powered analytics dashboards facilitate the tracking of yield projections, inventories, bottlenecks, and the optimization of data-driven choices. More labelled images are assimilated after further retraining, improving representational capacities and enabling adaptations for seasonal variability. Metrics demonstrate 97% accuracy, 95% precision and recall, 96% F1-score and AUC, 95% specificity; validating real-world viability.
Related papers
- Automated Multi-Class Crop Pathology Classification via Convolutional Neural Networks: A Deep Learning Approach for Real-Time Precision Agriculture [0.0]
This research introduces a Convolutional Neural Network (CNN)-based image classification system designed to automate the detection and classification of eight common crop diseases.<n>The solution is deployed on an open-source, mobile-compatible platform, enabling real-time image-based diagnostics for farmers in remote areas.
arXiv Detail & Related papers (2025-07-12T18:45:50Z) - Improving the accuracy of automated labeling of specimen images datasets via a confidence-based process [9.0255922670433]
We present and validate an approach that can greatly improve automatic labeling accuracy.
We demonstrate that a naive model that produced 86% initial accuracy can achieve improved performance.
After validating the approach in a number of ways, we annotate a large dataset of over 600,000 herbarium specimens.
arXiv Detail & Related papers (2024-11-15T09:39:12Z) - Localized Gaussians as Self-Attention Weights for Point Clouds Correspondence [92.07601770031236]
We investigate semantically meaningful patterns in the attention heads of an encoder-only Transformer architecture.
We find that fixing the attention weights not only accelerates the training process but also enhances the stability of the optimization.
arXiv Detail & Related papers (2024-09-20T07:41:47Z) - Test-time adaptation for geospatial point cloud semantic segmentation with distinct domain shifts [6.80671668491958]
Test-time adaptation (TTA) allows direct adaptation of a pre-trained model to unlabeled data during inference stage without access to source data or additional training.
We propose three domain shift paradigms: photogrammetric to airborne LiDAR, airborne to mobile LiDAR, and synthetic to mobile laser scanning.
Experimental results show our method improves classification accuracy by up to 20% mIoU, outperforming other methods.
arXiv Detail & Related papers (2024-07-08T15:40:28Z) - DP-IQA: Utilizing Diffusion Prior for Blind Image Quality Assessment in the Wild [54.139923409101044]
Blind image quality assessment (IQA) in the wild presents significant challenges.
Given the difficulty in collecting large-scale training data, leveraging limited data to develop a model with strong generalization remains an open problem.
Motivated by the robust image perception capabilities of pre-trained text-to-image (T2I) diffusion models, we propose a novel IQA method, diffusion priors-based IQA.
arXiv Detail & Related papers (2024-05-30T12:32:35Z) - Benchmarking Pathology Feature Extractors for Whole Slide Image Classification [2.173830337391778]
Weakly supervised whole slide image classification is a key task in computational pathology.
We conduct a comprehensive benchmarking of feature extractors to answer three critical questions.
We observe empirically, and by analysing the latent space, that skipping stain normalisation and image augmentations does not degrade performance.
We develop a novel evaluation metric to compare relative downstream performance, and show that the choice of feature extractor is the most consequential factor for downstream performance.
arXiv Detail & Related papers (2023-11-20T13:58:26Z) - Learning-Based Biharmonic Augmentation for Point Cloud Classification [79.13962913099378]
Biharmonic Augmentation (BA) is a novel and efficient data augmentation technique.
BA diversifies point cloud data by imposing smooth non-rigid deformations on existing 3D structures.
We present AdvTune, an advanced online augmentation system that integrates adversarial training.
arXiv Detail & Related papers (2023-11-10T14:04:49Z) - Gradient Mask: Lateral Inhibition Mechanism Improves Performance in
Artificial Neural Networks [5.591477512580285]
We propose Gradient Mask, which effectively filters out noise gradients in the process of backpropagation.
This allows the learned feature information to be more intensively stored in the network.
We show analytically how lateral inhibition in artificial neural networks improves the quality of propagated gradients.
arXiv Detail & Related papers (2022-08-14T20:55:50Z) - Intelligent Masking: Deep Q-Learning for Context Encoding in Medical
Image Analysis [48.02011627390706]
We develop a novel self-supervised approach that occludes targeted regions to improve the pre-training procedure.
We show that training the agent against the prediction model can significantly improve the semantic features extracted for downstream classification tasks.
arXiv Detail & Related papers (2022-03-25T19:05:06Z) - Generative Modeling Helps Weak Supervision (and Vice Versa) [87.62271390571837]
We propose a model fusing weak supervision and generative adversarial networks.
It captures discrete variables in the data alongside the weak supervision derived label estimate.
It is the first approach to enable data augmentation through weakly supervised synthetic images and pseudolabels.
arXiv Detail & Related papers (2022-03-22T20:24:21Z) - Fusion of CNNs and statistical indicators to improve image
classification [65.51757376525798]
Convolutional Networks have dominated the field of computer vision for the last ten years.
Main strategy to prolong this trend relies on further upscaling networks in size.
We hypothesise that adding heterogeneous sources of information may be more cost-effective to a CNN than building a bigger network.
arXiv Detail & Related papers (2020-12-20T23:24:31Z) - Circumventing Outliers of AutoAugment with Knowledge Distillation [102.25991455094832]
AutoAugment has been a powerful algorithm that improves the accuracy of many vision tasks.
This paper delves deep into the working mechanism, and reveals that AutoAugment may remove part of discriminative information from the training image.
To relieve the inaccuracy of supervision, we make use of knowledge distillation that refers to the output of a teacher model to guide network training.
arXiv Detail & Related papers (2020-03-25T11:51:41Z)
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.