Image Recognition for Garbage Classification Based on Pixel Distribution Learning
- URL: http://arxiv.org/abs/2409.03913v1
- Date: Thu, 5 Sep 2024 21:22:48 GMT
- Title: Image Recognition for Garbage Classification Based on Pixel Distribution Learning
- Authors: Jenil Kanani,
- Abstract summary: This study proposes a novel approach inspired by pixel distribution learning techniques to enhance automated garbage classification.
The method aims to address limitations of conventional convolutional neural network (CNN)-based approaches, including computational complexity and vulnerability to image variations.
We will conduct experiments using the Kaggle Garbage Classification dataset, comparing our approach with existing models to demonstrate the strength and efficiency of pixel distribution learning in automated garbage classification technologies.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The exponential growth in waste production due to rapid economic and industrial development necessitates efficient waste management strategies to mitigate environmental pollution and resource depletion. Leveraging advancements in computer vision, this study proposes a novel approach inspired by pixel distribution learning techniques to enhance automated garbage classification. The method aims to address limitations of conventional convolutional neural network (CNN)-based approaches, including computational complexity and vulnerability to image variations. We will conduct experiments using the Kaggle Garbage Classification dataset, comparing our approach with existing models to demonstrate the strength and efficiency of pixel distribution learning in automated garbage classification technologies.
Related papers
- WasteGAN: Data Augmentation for Robotic Waste Sorting through Generative Adversarial Networks [7.775894876221921]
We introduce a data augmentation method based on a novel GAN architecture called wasteGAN.
The proposed method allows to increase the performance of semantic segmentation models, starting from a very limited bunch of labeled examples.
We then leverage the higher-quality segmentation masks predicted from models trained on the wasteGAN synthetic data to compute semantic-aware grasp poses.
arXiv Detail & Related papers (2024-09-25T15:04:21Z) - Pixel-Inconsistency Modeling for Image Manipulation Localization [63.54342601757723]
Digital image forensics plays a crucial role in image authentication and manipulation localization.
This paper presents a generalized and robust manipulation localization model through the analysis of pixel inconsistency artifacts.
Experiments show that our method successfully extracts inherent pixel-inconsistency forgery fingerprints.
arXiv Detail & Related papers (2023-09-30T02:54:51Z) - Unsupervised Domain Transfer with Conditional Invertible Neural Networks [83.90291882730925]
We propose a domain transfer approach based on conditional invertible neural networks (cINNs)
Our method inherently guarantees cycle consistency through its invertible architecture, and network training can efficiently be conducted with maximum likelihood.
Our method enables the generation of realistic spectral data and outperforms the state of the art on two downstream classification tasks.
arXiv Detail & Related papers (2023-03-17T18:00:27Z) - DELAD: Deep Landweber-guided deconvolution with Hessian and sparse prior [0.22940141855172028]
We present a model for non-blind image deconvolution that incorporates the classic iterative method into a deep learning application.
We build our network based on the iterative Landweber deconvolution algorithm, which is integrated with trainable convolutional layers to enhance the recovered image structures and details.
arXiv Detail & Related papers (2022-09-30T11:15:03Z) - ECLAD: Extracting Concepts with Local Aggregated Descriptors [6.470466745237234]
We propose a novel method for automatic concept extraction and localization based on representations obtained through pixel-wise aggregations of CNN activation maps.
We introduce a process for the validation of concept-extraction techniques based on synthetic datasets with pixel-wise annotations of their main components.
arXiv Detail & Related papers (2022-06-09T14:25:23Z) - Deep face recognition with clustering based domain adaptation [57.29464116557734]
We propose a new clustering-based domain adaptation method designed for face recognition task in which the source and target domain do not share any classes.
Our method effectively learns the discriminative target feature by aligning the feature domain globally, and, at the meantime, distinguishing the target clusters locally.
arXiv Detail & Related papers (2022-05-27T12:29:11Z) - Deblurring via Stochastic Refinement [85.42730934561101]
We present an alternative framework for blind deblurring based on conditional diffusion models.
Our method is competitive in terms of distortion metrics such as PSNR.
arXiv Detail & Related papers (2021-12-05T04:36:09Z) - Spatially-Adaptive Image Restoration using Distortion-Guided Networks [51.89245800461537]
We present a learning-based solution for restoring images suffering from spatially-varying degradations.
We propose SPAIR, a network design that harnesses distortion-localization information and dynamically adjusts to difficult regions in the image.
arXiv Detail & Related papers (2021-08-19T11:02:25Z) - Towards artificially intelligent recycling Improving image processing
for waste classification [0.0]
IBM's Wastenet project aims to improve recycling by using artificial intelligence for waste classification.
This paper builds on this project through the use of transfer learning and data augmentation techniques.
Results show that these augmentation techniques further improve the test accuracy of the final model to 95.40%.
arXiv Detail & Related papers (2021-08-09T21:41:48Z) - Learning degraded image classification with restoration data fidelity [0.0]
We investigate the influence of degradation types and levels on four widely-used classification networks.
We propose a novel method leveraging a fidelity map to calibrate the image features obtained by pre-trained networks.
Our results reveal that the proposed method is a promising solution to mitigate the effect caused by image degradation.
arXiv Detail & Related papers (2021-01-23T23:47:03Z) - Incremental Embedding Learning via Zero-Shot Translation [65.94349068508863]
Current state-of-the-art incremental learning methods tackle catastrophic forgetting problem in traditional classification networks.
We propose a novel class-incremental method for embedding network, named as zero-shot translation class-incremental method (ZSTCI)
In addition, ZSTCI can easily be combined with existing regularization-based incremental learning methods to further improve performance of embedding networks.
arXiv Detail & Related papers (2020-12-31T08:21:37Z)
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.