Evaluating the Single-Shot MultiBox Detector and YOLO Deep Learning Models for the Detection of Tomatoes in a Greenhouse
Sandro A. Magalh\~aes, Lu\'is Castro, Germano Moreira, Filipe N., Santos, m\'ario Cunha, Jorge Dias, Ant\'onio P. Moreira

TL;DR
This paper benchmarks deep learning models for detecting green and reddish tomatoes in greenhouses, providing a new annotated dataset to advance real-time agricultural robotic perception.
Contribution
It introduces a novel annotated dataset of green and reddish tomatoes and evaluates SSD and YOLO models for effective detection in greenhouse conditions.
Findings
SSD MobileNet v2 achieved the highest F1-score of 66.15%.
YOLOv4 Tiny demonstrated the fastest inference time of about 5 ms.
Models can detect occluded tomatoes effectively.
Abstract
The development of robotic solutions for agriculture requires advanced perception capabilities that can work reliably in any crop stage. For example, to automatise the tomato harvesting process in greenhouses, the visual perception system needs to detect the tomato in any life cycle stage (flower to the ripe tomato). The state-of-the-art for visual tomato detection focuses mainly on ripe tomato, which has a distinctive colour from the background. This paper contributes with an annotated visual dataset of green and reddish tomatoes. This kind of dataset is uncommon and not available for research purposes. This will enable further developments in edge artificial intelligence for in situ and in real-time visual tomato detection required for the development of harvesting robots. Considering this dataset, five deep learning models were selected, trained and benchmarked to detect green and…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Feature Pyramid Network · You Only Look Once · Grid Sensitive · Residual Connection · 1x1 Convolution · Softmax · Max Pooling · k-Means Clustering · Tanh Activation
