MmCows: A Multimodal Dataset for Dairy Cattle Monitoring

Published: 26 Sept 2024, Last Modified: 24 Dec 2024NeurIPS 2024 Track Datasets and Benchmarks SpotlightEveryoneRevisionsBibTeXCC BY-NC 4.0
Keywords: Multimodal dataset, livestock monitoring, behavior monitoring, multi-view, visual localization, UWB localization
TL;DR: MmCows is a multimodal dataset for livestock monitoring with isometric-view RGB cameras, UWB localization, inertial sensors, temperature sensors, and environmental sensors, as well as daily milk yield and health records.
Abstract:

Precision livestock farming (PLF) has been transformed by machine learning (ML), enabling more precise and timely interventions that enhance overall farm productivity, animal welfare, and environmental sustainability. However, despite the availability of various sensing technologies, few datasets leverage multiple modalities, which are crucial for developing more accurate and efficient monitoring devices and ML models. To address this gap, we present MmCows, a multimodal dataset for dairy cattle monitoring. This dataset comprises a large amount of synchronized, high-quality measurement data on behavioral, physiological, and environmental factors. It includes two weeks of data collected using wearable and implantable sensors deployed on ten milking Holstein cows, such as ultra-wideband (UWB) sensors, inertial sensors, and body temperature sensors. In addition, it features 4.8 million frames of high-resolution image sequences from four isometric view cameras, as well as temperature and humidity data from environmental sensors. We also gathered milk yield data and outdoor weather conditions. One full day’s worth of image data is annotated as ground truth, totaling 20,000 frames with 213,000 bounding boxes of 16 cows, along with their 3D locations and behavior labels. An extensive analysis of MmCows is provided to evaluate the modalities individually and their complementary benefits. The release of MmCows and its benchmarks will facilitate research on multimodal monitoring of dairy cattle, thereby promoting sustainable dairy farming. The dataset and the code for benchmarks are available at https://github.com/neis-lab/mmcows.

Supplementary Material: pdf
Submission Number: 2223
Loading