Paper Title
Multi-Layer and Channel–Spatial Feature Interaction Technique for Temporal Variation Detection in Satellite Imagery
Article Identifiers
Registration ID: IJNRD_313303
Published ID: IJNRD2604135
: https://doi.org/10.56975/ijnrd.v11i4.313303
About Hard Copy and Transparent Peer Review Report
Keywords
Remote Sensing Image Change Detection, Deep Learning, Convolutional Neural Networks (CNN), Layer-Exchange Mechanism, Channel–Spatial Difference Analysis.
Abstract
Change detection in remote sensing imagery is an important part of Earth observation because it lets us keep an eye on land use, urban growth, environmental changes, disaster response, and infrastructure planning. The main purpose of change detection is to find and separate areas that have changed between two or more images taken at different times, which are often called bitemporal images. Pixel-level change detection looks at each corresponding pixel in temporal images to find even the smallest changes. Conventional techniques frequently depend on basic image differencing, thresholding, or standard convolutional neural networks (CNNs), which predominantly emphasise spatial disparities among pixels. These methods are good at finding big changes, but they often miss small or gradual ones, especially in complicated real-life situations, because they don't use enough feature information. Deep learning techniques have recently become a powerful way to find changes in remote sensing data. Convolutional neural networks and encoder-decoder architectures pull out hierarchical feature representations from bitemporal images, which makes segmentation more accurate than traditional methods. In this case, feature maps made by deep networks have both spatial and channel dimensions, and each one stores different information. The spatial dimension records the structure and position of objects, while the channel dimension records changes in meaning, spectrum, and high-level features. But most current change detection methods only look at differences in the spatial dimension and miss the important information that is stored in the channel dimension. As a result, small changes in the spectrum, the environment, or the structure may not be noticed, which limits the overall performance of traditional models. This study suggests a new deep learning framework called LENet that combines a Channel-Spatial Difference Weighting (CSDW) module and a Layer-Exchange decoding structure to improve pixel-level change detection. The CSDW module is made to find differences not just in the spatial dimension but also in the channel dimension. This module makes the model more sensitive to small, gradual, and large-scale changes by combining and sharing difference information from both sides. The channel-spatial weighting mechanism helps the network tell the difference between important changes and background noise and unimportant features. This makes it better at finding and distinguishing features. Also, bitemporal images naturally have strong correlations because they show the same place on Earth at different times. To be able to find changes, models need to be able to find these correlations between images and use temporal dependencies. LENet uses a Layer-Exchange decoding mechanism to do this. This lets feature maps from the two temporal images interact and share information across decoder layers. This mechanism improves the alignment of temporal features and makes the model better at using complementary information from both images, which helps it find changed areas more accurately. The proposed framework overcomes the limitations of traditional methods that only look at spatial differences or treat temporal features separately by combining channel-spatial difference learning with better inter-image feature interaction. We ran a lot of tests on four well-known benchmark datasets—CLCD, PX-CLCD, LEVIR-CD, and S2Looking—to make sure that the proposed LENet model works. The evaluation metrics encompassed Precision, Recall, F1-score, and Overall Accuracy, guaranteeing a comprehensive appraisal of model performance across various scenarios. Experimental results show that LENet works much better than other methods, such as traditional Siamese networks, encoder-decoder architectures, and attention-based models. The model is better at finding small, gradual, and large changes, while lowering the number of false negatives and making it more sensitive to complex changes. In conclusion, the proposed LENet framework is a strong, accurate, and quick way to find changes at the pixel level in remote sensing images. The system gets both spatial and channel information, models how bitemporal images depend on each other over time, and works better than any other system on a wide range of datasets by combining channel-spatial difference weighting and layer-exchange decoding. This research enhances intelligent Earth observation systems and establishes a robust basis for future investigations in multi-temporal and high-resolution remote sensing change detection.
Downloads
How To Cite (APA)
Mrs.G.Vijayalaxmi, VAISHNAVI KOLIPAKA, DARAM SHIVA NANDAN, & SULIGE SUSMITHA (April-2026). Multi-Layer and Channel–Spatial Feature Interaction Technique for Temporal Variation Detection in Satellite Imagery. INTERNATIONAL JOURNAL OF NOVEL RESEARCH AND DEVELOPMENT, 11(4), b258-b265. https://doi.org/10.56975/ijnrd.v11i4.313303
Issue
Volume 11 Issue 4, April-2026
Pages : b258-b265
Other Publication Details
Paper Reg. ID: IJNRD_313303
Published Paper Id: IJNRD2604135
Research Area: Other area not in list
Author Type: Indian Author
Country: warangal, telangana, India
Published Paper PDF: https://ijnrd.org/papers/IJNRD2604135.pdf
Published Paper URL: https://ijnrd.org/viewpaperforall?paper=IJNRD2604135
Crossref DOI: https://doi.org/10.56975/ijnrd.v11i4.313303
About Publisher
Journal Name: INTERNATIONAL JOURNAL OF NOVEL RESEARCH AND DEVELOPMENT(IJNRD)
UGC CARE JOURNAL PUBLICATION | ISSN: 2456-4184 | IMPACT FACTOR: 8.76 Calculated By Google Scholar | ESTD YEAR: 2016
An International UGC CARE JOURNAL PUBLICATION, Low Cost, Scholarly Open Access, Peer-Reviewed, Refereed Journal Impact Factor 8.76 Calculate by Google Scholar and Semantic Scholar | AI-Powered Research Tool, Multidisciplinary, Monthly, Multilanguage Journal Indexing in All Major Database & Metadata, Citation Generator
Publisher: IJNRD (IJ Publication) Janvi Wave | IJNRD.ORG | IJNRD.COM | IJPUB.ORG
Copyright & License
© 2026 - Authors hold the copyright of this article. This work is licensed under a Creative Commons Attribution 4.0 International License. and The Open Definition.
This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (CC BY 4.0).
🛡️ Disclaimer: The content, data, and findings in this article are based on the authors’ research and have been peer-reviewed for academic purposes only. Readers are advised to verify all information before practical or commercial use.
The journal and its editorial board are not liable for any errors, losses, or consequences arising from its use.
Publication Timeline
Article Preview: View Full Paper
Call For Paper
IJNRD is a Scholarly Open Access, Peer-Reviewed, Refereed, and UGC CARE Journal Publication with a High Impact Factor of 8.76 (calculated by Google Scholar & Semantic Scholar | AI-Powered Research Tool). It is a Multidisciplinary, Monthly, Low-Cost, and Transparent Peer Review Journal Publication that adheres to the New UGC CARE Transparent Peer-Reviewed Journal Policy and aligns with Scopus Journal Publication standards to ensure the highest level of research quality and credibility.
IJNRD offers comprehensive Journal Publication Services including indexing in all major databases and metadata repositories, Digital Object Identifier (Crossref DOI) assignment for each published article with additional fees, citation generation tools, and full Open Access visibility to enhance global research reach and citation impact.
The INTERNATIONAL JOURNAL OF NOVEL RESEARCH AND DEVELOPMENT (IJNRD) aims to advance applied, theoretical, and experimental research across diverse academic and professional fields. The journal promotes global knowledge exchange among researchers, developers, academicians, engineers, and practitioners, serving as a trusted platform for innovative, peer-reviewed journal publication and scientific collaboration.
Indexing Coverage: Google Scholar, SSRN, ResearcherID-Publons, Semantic Scholar (AI-Powered Research Tool), Microsoft Academic, Academia.edu, arXiv.org, ResearchGate, CiteSeerX, ResearcherID (Thomson Reuters), Mendeley, DocStoc, ISSUU, Scribd, and many other recognized academic repositories.
Transparent Peer Review Journal Publication: IJNRD operates a strict double-blind peer review system managed by 3000+ expert reviewers, ensuring ethical, unbiased, and high-quality review for every research paper.
For Indian Authors : Get a transparent peer review report from Scholar9.com for just ₹1000. View Sample Report
For Foreign Authors : A detailed peer review report is available through Scholar9.com for $20 USD. View Sample Report
Transparent Peer Review Journal Publication
⭐ Transparent Peer Review | 🕵️♂️ Double-Blind | 👨🏫 3000+ Expert Reviewers | 🇮🇳 Report for India Author ₹1000 | 🌐 Report for Foreign Author $20 | 📄 Sample Reports on Scholar9.com | 🌍 High Credibility | ⚖️ Ethical & Unbiased Evaluation
How to submit the paper?
By Our website
Click Here to Submit Paper Online
Recently, the UGC discontinued the UGC-CARE Journal List and introduced new parameters that allow publication in Transparent Peer-Reviewed (Refereed) Journals. IJNRD is Transparent Peer Review Journal Valid As per New UGC Notification.
You can now publish your research paper in IJNRD.ORG. IJNRD is a Transparent Peer-Reviewed Open Access (Refereed Journal), UGC and UGC CARE Approved, Crossref DOI, Multidisciplinary, Impact Factor calculate by Google Scholar. As an International, open-access, and online journal, Publishing with us ensures wider reach, academic credibility, and enhanced recognition for your work.
For more details, refer to the official notice: UGC Public Notice
⭐ Low Cost ₹1570 | 📚 UGC CARE Approved | 🔍 Peer-Reviewed | 🌐 Open Access | 🔗 Crossref DOI & Global Indexing | 📊 Google Scholar Impact Factor | 🧪 Multidisciplinary
Submit Paper Online Call for Paper About IJNRD UGC CARE Approval
Important Dates for Current issue
Paper Submission Open For: April 2026
Current Issue: Volume 11 | Issue 4 | April 2026
Impact Factor: 8.76
Last Date for Paper Submission: Till 30-Apr-2026
Notification of Review Result: Transparent peer review process - your paper is evaluated by experts, and you receive acceptance or rejection updates via email and SMS.
Publication of Paper: Once all documents are submitted, your paper is published without delay, and you can instantly download your certificate and confirmation letter online.
Frequency: Monthly (12 issue Annually).
Journal Type: IJNRD is an international open-access journal offering Low Cost Journal Publication, transparent Peer Review Journal Publication, Crossref DOI, and multidisciplinary research visibility under UGC CARE Approved Journal Publication.
Subject Category: Research Area
Approval, Licenses and Indexing: More Details
Call For Paper - Volume 11 | Issue 4 | April 2026
IJNRD.org offers low-cost journal publication starting at ₹1570 with UGC CARE Approved, refereed, peer-reviewed, open-access publishing. This multidisciplinary monthly journal, available in both online and print formats, features a strong Google Scholar-based impact factor of 8.76, Transparent Peer Review, CrossRef DOI, global indexing, fast publication, and complete metadata for maximum research visibility and citation impact across multidisciplinary domains.
Volume 11 | Issue 4 | April 2026 | IJNRD Transparent Peer Review Certificate | Submit Paper Online
⭐ UGC CARE Approved Refereed Journal | 🔍 Transparent Peer Review | 🌐 Open Access Publishing | 💰 Low-Cost ₹1570 | 🔗 CrossRef DOI & Global Indexing | 📊 Google Scholar Impact Factor 8.76 | 🧪 Multidisciplinary | Online & Print
Submit Paper Online
