CKSP: Cross-species Knowledge Sharing and Preserving for Universal Animal Activity Recognition
Axiu Mao, Meilu Zhu, Zhaojin Guo, Zheng He, Tomas Norton, and Kai Liu

TL;DR
This paper introduces CKSP, a novel framework for animal activity recognition that leverages cross-species data sharing to improve accuracy, especially when individual species datasets are limited, by using shared and species-specific features.
Contribution
The paper proposes a new cross-species knowledge sharing framework with specialized modules to enhance animal activity recognition across multiple species, addressing data scarcity and distribution discrepancies.
Findings
Significant accuracy improvements on horse, sheep, and cattle datasets.
Effective learning of inter-species complementarity and generic features.
Enhanced performance with limited species-specific data.
Abstract
Deep learning techniques are dominating automated animal activity recognition (AAR) tasks with wearable sensors due to their high performance on large-scale labelled data. However, current deep learning-based AAR models are trained solely on datasets of individual animal species, constraining their applicability in practice and performing poorly when training data are limited. In this study, we propose a one-for-many framework, dubbed Cross-species Knowledge Sharing and Preserving (CKSP), based on sensor data of diverse animal species. Given the coexistence of generic and species-specific behavioural patterns among different species, we design a Shared-Preserved Convolution (SPConv) module. This module assigns an individual low-rank convolutional layer to each species for extracting species-specific features and employs a shared full-rank convolutional layer to learn generic features,…
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Taxonomy
TopicsBiomedical Text Mining and Ontologies
MethodsConvolution · Batch Normalization
