Third Workshop on
Deadline for Paper Submission 10th May 2025
Third Workshop on
16th-18th July, 2025 at NIT Srinagar
The application of methodologies to measure specific organism’s (e.g. plant, insect etc.) traits (morphology, growth etc.) related to its structure and function is termed as phenotyping. With the emergence of low-cost and high-resolution multi-modal cameras, acquisition of 2D and 3D data permits high-throughput micro and macro analysis. This is a rapidly growing field at the interface of biology and computer vision (CV) termed-High-throughput Vision based Phenotyping. Agriculture Automation & Information systems nowadays extensively use high speed image sensors along with multi-scale and hyperspectral imaging methods to effectively capture plant traits, facilitating comprehensive monitoring and analysis. Vision-based plant phenotyping encounters difficulties in handling large and intricate data, coping with unpredictable environmental changes, and combining different types of information. Overcoming these challenges requires advanced methods to make sense of the data and help improve crops and farming practices effectively.
In contrast to common datasets like ImageNet, MSCOCO, PASCAL VOC datasets, organisms present unique challenges due to their dynamic nature and inherent variability. These challenges include tracking deformable objects like microbes in microscopy, multi-label segmentation of self-similar objects such as leaves in plants and fish, and 3D reconstruction in complex environments with overlapping surfaces, such as plant structures. Natural conditions, such as those found in agricultural fields, greenhouses, forests, and marine ecosystems, further complicate image analysis. This workshop will spotlight the challenges of applying computer vision to plant/animal phenotyping and agricultural research, aiming to showcase advanced methodologies, identify critical unresolved issues, and engage computer scientists interested in this domain. As effective plant phenotyping is crucial for sustainability, fostering community involvement and welcoming computer vision experts into this field is of paramount importance.
● Detection, multi-scale instance and semantic segmentation.
Farmland pattern classification, detection, and segmentation from agricultural/phenotyping imagery.
● Resources and dataset benchmarks for agricultural imagery based pattern analysis.
● Data fusion of multi/hyper-spectral image data and multi-modal data sources
● Self, semi, and weakly supervised methods for agricultural/phenotyping imagery
● Vision Language Modelling VLMs for agricultural/phenotyping imagery
● Transfer learning and domain adaptation
● Generative AI for plant/animal/microorganisms phenotyping
● 3D modeling and segmentation, UAV based field phenotyping
● Efficient data sampling methods and learning with limited training data or in presence of noisy, sparse, and imbalanced annotations.
● Computer vision applications which promote the study or adoption of sustainable agriculture
We invite papers from students/academia/industry for the 3rd workshop on High Throughput Vision based Phenotyping at NCVPRIPG 2025 (NIT Srinagar). We invite high-quality papers in the area of plant/animal phenotyping or computer vision for agriculture or on some current ongoing work that presents innovative ideas, methods, and applications in the area of phenotyping using computer vision. We encourage submissions that have interdisciplinary collaborations between machine learning/computer vision and problem domain experts. We especially encourage work where machine learning and in particular representation learning could meaningfully amplify existing efforts for the phenotyping area.
We invite original research papers that present innovative ideas, methods, and applications in the area of phenotyping using computer vision. HTVP’25 invites previously unpublished and original work.
For your convenience, we have summarized in the “Author Guidelines” document how a proceedings paper should be structured, how elements (headings, figures, references) should be formatted using our predefined styles, etc. We also give some insight on how your paper will be typeset at NCVPRIPG. The PDF of the Authors Guidelines can be downloaded here:Proceedings Guidelines for Authors.
Authors must use the manuscript template specified here. The LaTeX and Word templates can be downloaded from the following links:
Authors can use the Proceedings Templates available in the scientific authoring platform Overleaf (Template). Authors should prepare the manuscript between 10-15 Pages including references.
The proceedings of the conference will be published by Scopus Indexed – Springer in Communications in Computer and Information Science series (CCIS). CCIS is abstracted/indexed in DBLP, Google Scholar, EI-Compendex, Mathematical Reviews, SCImago, Scopus. CCIS volumes are also generally submitted for inclusion in ISI Proceedings.
Link for Registration: https://forms.gle/taXAQKx92ZqRHkgo8
This workshop aims to provide a forum to both show current relevant efforts in interdisciplinary areas between computer vision and agriculture, and to encourage further research and conversations within the computer vision community to tackle impactful agriculture-vision problems.
Open new avenues for collaboration amongst researchers and agricultural organizations, NGOs, local government bodies and other organizations to enable CV based beneficial research.
Define new, quantifiable, and impactful research questions/areas for the CV community.
New tools, datasets and projects can be promoted which would interest CV researchers to apply their skills on challenging phenomics problems.
Workshop Paper Submission Deadline: 10 May 2025 22 May 2025
Workshop Paper Acceptance Notification: 5 June 2025
Workshop Final Paper Submission Deadline: 20 June 2025
Workshop Author Registration Deadline: 22 June 2025