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Toward automatic plant phenotyping: starting from leaf counting
by
Lin, Yao-Cheng
, Lin, Wei-Yang
, Tu, Yi-Lin
in
1195: Deep Learning for Multimedia Signal Processing and Applications
/ Agricultural biotechnology
/ Computer architecture
/ Computer Communication Networks
/ Computer Science
/ Computer vision
/ Data Structures and Information Theory
/ Datasets
/ Image segmentation
/ Multimedia Information Systems
/ Object recognition
/ Research facilities
/ Special Purpose and Application-Based Systems
2022
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Toward automatic plant phenotyping: starting from leaf counting
by
Lin, Yao-Cheng
, Lin, Wei-Yang
, Tu, Yi-Lin
in
1195: Deep Learning for Multimedia Signal Processing and Applications
/ Agricultural biotechnology
/ Computer architecture
/ Computer Communication Networks
/ Computer Science
/ Computer vision
/ Data Structures and Information Theory
/ Datasets
/ Image segmentation
/ Multimedia Information Systems
/ Object recognition
/ Research facilities
/ Special Purpose and Application-Based Systems
2022
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Do you wish to request the book?
Toward automatic plant phenotyping: starting from leaf counting
by
Lin, Yao-Cheng
, Lin, Wei-Yang
, Tu, Yi-Lin
in
1195: Deep Learning for Multimedia Signal Processing and Applications
/ Agricultural biotechnology
/ Computer architecture
/ Computer Communication Networks
/ Computer Science
/ Computer vision
/ Data Structures and Information Theory
/ Datasets
/ Image segmentation
/ Multimedia Information Systems
/ Object recognition
/ Research facilities
/ Special Purpose and Application-Based Systems
2022
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Toward automatic plant phenotyping: starting from leaf counting
Journal Article
Toward automatic plant phenotyping: starting from leaf counting
2022
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Overview
The development of automatic plant phenotyping systems has drawn great attention in the recent years. It can help improve the throughput of phenotyping measurements and reduce the associated human labor cost. Working towards the goal of automatic plant phenotyping, here we begin with developing an automatic method for leaf counting. Most of the previous approaches for leaf counting are based on regression modeling or instance segmentation. In contrast to these approaches, we consider the task of leaf counting as a object detection problem. In particular, we perform object detection and localization for leaves in the input images. The location and size of a leaf is indicated by a bounding box. Thus, we can obtain the number of leaves by counting the number of bounding boxes. We develop our leaf counting network architecture based on YOLOv3. In order to evaluate our proposed method, we utilize the cauliflower images from the ABRC (Agricultural Biotechnology Research Center, Academia Sinica) and the Arabidopsis images from the CVPPP (Computer Vision Problems in Plant Phenotyping) dataset. Our proposed method achieves state of the art results on these datasets.
Publisher
Springer US,Springer Nature B.V
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