Beyond image classification: zooplankton identification with deep vector space embeddings
Ketil Malde, Hyeongji Kim

TL;DR
This paper introduces a deep vector space embedding approach for zooplankton image classification that captures semantic relationships and handles unseen classes, addressing limitations of traditional classifiers in complex ecological data.
Contribution
The paper presents a novel deep embedding method for zooplankton images that improves classification flexibility and reveals data structure beyond standard classifiers.
Findings
Embedding achieves comparable accuracy to classifiers.
Embedding reveals meaningful data structures.
Method generalizes to unseen classes.
Abstract
Zooplankton images, like many other real world data types, have intrinsic properties that make the design of effective classification systems difficult. For instance, the number of classes encountered in practical settings is potentially very large, and classes can be ambiguous or overlap. In addition, the choice of taxonomy often differs between researchers and between institutions. Although high accuracy has been achieved in benchmarks using standard classifier architectures, biases caused by an inflexible classification scheme can have profound effects when the output is used in ecosystem assessments and monitoring. Here, we propose using a deep convolutional network to construct a vector embedding of zooplankton images. The system maps (embeds) each image into a high-dimensional Euclidean space so that distances between vectors reflect semantic relationships between images. We…
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Taxonomy
TopicsFish Ecology and Management Studies · Domain Adaptation and Few-Shot Learning · Fish biology, ecology, and behavior
