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Main Authors: Singh, Rajhans, Puhl, Rafael Bidese, Dhakal, Kshitiz, Sornapudi, Sudhir
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.07252
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author Singh, Rajhans
Puhl, Rafael Bidese
Dhakal, Kshitiz
Sornapudi, Sudhir
author_facet Singh, Rajhans
Puhl, Rafael Bidese
Dhakal, Kshitiz
Sornapudi, Sudhir
contents Deep learning models are transforming agricultural applications by enabling automated phenotyping, monitoring, and yield estimation. However, their effectiveness heavily depends on large amounts of annotated training data, which can be labor and time intensive. Recent advances in open-set object detection, particularly with models like Grounding-DINO, offer a potential solution to detect regions of interests based on text prompt input. Initial zero-shot experiments revealed challenges in crafting effective text prompts, especially for complex objects like individual leaves and visually similar classes. To address these limitations, we propose an efficient few-shot adaptation method that simplifies the Grounding-DINO architecture by removing the text encoder module (BERT) and introducing a randomly initialized trainable text embedding. This method achieves superior performance across multiple agricultural datasets, including plant-weed detection, plant counting, insect identification, fruit counting, and remote sensing tasks. Specifically, it demonstrates up to a $\sim24\%$ higher mAP than fully fine-tuned YOLO models on agricultural datasets and outperforms previous state-of-the-art methods by $\sim10\%$ in remote sensing, under few-shot learning conditions. Our method offers a promising solution for automating annotation and accelerating the development of specialized agricultural AI solutions.
format Preprint
id arxiv_https___arxiv_org_abs_2504_07252
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Few-Shot Adaptation of Grounding DINO for Agricultural Domain
Singh, Rajhans
Puhl, Rafael Bidese
Dhakal, Kshitiz
Sornapudi, Sudhir
Computer Vision and Pattern Recognition
Deep learning models are transforming agricultural applications by enabling automated phenotyping, monitoring, and yield estimation. However, their effectiveness heavily depends on large amounts of annotated training data, which can be labor and time intensive. Recent advances in open-set object detection, particularly with models like Grounding-DINO, offer a potential solution to detect regions of interests based on text prompt input. Initial zero-shot experiments revealed challenges in crafting effective text prompts, especially for complex objects like individual leaves and visually similar classes. To address these limitations, we propose an efficient few-shot adaptation method that simplifies the Grounding-DINO architecture by removing the text encoder module (BERT) and introducing a randomly initialized trainable text embedding. This method achieves superior performance across multiple agricultural datasets, including plant-weed detection, plant counting, insect identification, fruit counting, and remote sensing tasks. Specifically, it demonstrates up to a $\sim24\%$ higher mAP than fully fine-tuned YOLO models on agricultural datasets and outperforms previous state-of-the-art methods by $\sim10\%$ in remote sensing, under few-shot learning conditions. Our method offers a promising solution for automating annotation and accelerating the development of specialized agricultural AI solutions.
title Few-Shot Adaptation of Grounding DINO for Agricultural Domain
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.07252