TL;DR
This paper presents a CNN-based method for dense object tracking in a honeybee hive, achieving near human-level accuracy in recognizing and tracking individual bees in complex, crowded environments from raw images.
Contribution
The authors develop a novel CNN architecture that combines segmentation and temporal regularities to accurately track dense groups of objects, specifically bees, with significantly reduced network size.
Findings
96% detection accuracy of individual bees
Location error of ~7% of body dimension
Orientation error of 12 degrees
Abstract
From human crowds to cells in tissue, the detection and efficient tracking of multiple objects in dense configurations is an important and unsolved problem. In the past, limitations of image analysis have restricted studies of dense groups to tracking a single or subset of marked individuals, or to coarse-grained group-level dynamics, all of which yield incomplete information. Here, we combine convolutional neural networks (CNNs) with the model environment of a honeybee hive to automatically recognize all individuals in a dense group from raw image data. We create new, adapted individual labeling and use the segmentation architecture U-Net with a loss function dependent on both object identity and orientation. We additionally exploit temporal regularities of the video recording in a recurrent manner and achieve near human-level performance while reducing the network size by 94% compared…
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Taxonomy
MethodsConcatenated Skip Connection · *Communicated@Fast*How Do I Communicate to Expedia? · Max Pooling · Convolution · U-Net
