Apis mellifera with location, date, health, and more labels
LicenseCC0: Public Domain
Tagsbiology, image data, animals, environment, agriculture
Context
Every third bite of food relies on pollination by bees. At the same time, this past winter honeybee hive losses have exceeded 60% in some states. How can we address this issue? How can we better understand our bees? And most importantly, how can we save them before it’s too late?
While many indications of hive strength and health are visible on the inside of the hive, frequent check-ups on the hive are time-consuming and disruptive to the bees’ workflow and hive in general. By investigating the bees that leave the hive, we can gain a more complete understanding of the hive itself. For example, an unhealthy hive infected with varroa mites will have bees with deformed wings or mites on their backs. These characteristics can be observed without opening the hive. To protect against robber bees, we could track the ratio of pollen-carrying bees vs those without. A large influx of bees without pollen may be an indication of robber bees. This dataset aims to provide basic visual data to train machine learning models to classify bees in these categories, paving the way for more intelligent hive monitoring or beekeeping in general.
Content
This dataset contains 5,100+ bee images annotated with location, date, time, subspecies, health condition, caste, and pollen.
The original batch of images was extracted from still time-lapse videos of bees. By averaging the frames to calculate a background image, each frame of the video was subtracted against that background to bring out the bees in the forefront. The bees were then cropped out of the frame so that each image has only one bee. Because each video is accompanied by a form with information about the bees and hive, the labeling process is semi-automated. Each video results in differing image crop quality levels. This dataset will be updated as more videos and data become available.
-1 means the information is coming soon.
Acknowledgements
Thank you to everyone who has submitted a video:
James Temple
Ken McKenzie
Howard Wetsman
Daniel Long
Michael J. Gras
John Therriault
Cal Hansen
Jim Davis
Jack Goral
Inspiration
How can we improve our understanding of a hive through images of bees?
How can we expedite the hive checkup process?
How can bee image data help us recognize problems earlier?
How can bee image data help us save our bees?
Contribute
If you would like to contribute or learn more, please fill out this form to be added to the email list: https://goo.gl/forms/FzSUhw6z9QMSTpaH2, or contact jy2k16@user1