ORCID Identifier(s)

ORCID 0000-0002-7916-714X, ORCID 0000-0001-5377-2627

Document Type

Dataset

DOI

https://doi.org/10.32855/dataset.2024.05.034

Production/Collection Date

10-17-2020

Production/Collection Location

Texas A&M AgriLife Research and Extension Center’s Halfway Station, TX, USA

Depositor

William J. Beksi

Deposit Date

6-7-2024

Data Type

Video

Abstract

The TexCot22 dataset is a set of cotton crop video sequences for training and testing multi-object tracking methods. Each tracking sequence is 10 to 20 seconds in length. The dataset contains of a total of 30 sequences of which 17 are for training and the remaining 13 are for testing. Among the training sequences, 2 of them consist of roughly 5,000 annotated images, which can be used to train a cotton boll detection model. The video sequences were captured at 4K resolution and at distinct frame rates (e.g., 10, 15, 30). There are typically 2 to 10 cotton bolls per cluster. The average width and height of an annotated bounding box is approximately 230 x 210 pixels. To make the dataset robust to environmental conditions, we recorded the field videos at separate times of day to account for varying lighting conditions. In total, there are roughly 30 x 300 frames with 150,000 labeled instances. On average there are 70 unique cotton bolls in each sequence.

Disciplines

Agriculture | Computer Sciences

Publication Date

1-9-2024

Language

English

TexCot22_Detection-1_1.zip (2908399 kB)
TexCot22_Detection-1_2.zip (923752 kB)
TexCot22_Detection-2_1.zip (3377128 kB)
TexCot22_Detection-2_2.zip (3804791 kB)
TexCot22-1.zip (3865957 kB)
TexCot22-2.zip (4139201 kB)
TexCot22-3.zip (4123982 kB)
TexCot22-4.zip (4108641 kB)
TexCot22-5.zip (2577394 kB)

Share

COinS