| Literature DB >> 30935123 |
Madonna Benjamin1, Steven Yik2.
Abstract
The burgeoning research and applications of technological advances are launching the development of precision livestock farming. Through sensors (cameras, microphones and accelerometers), images, sounds and movements are combined with algorithms to non-invasively monitor animals to detect their welfare and predict productivity. In turn, this remote monitoring of livestock can provide quantitative and early alerts to situations of poor welfare requiring the stockperson's attention. While swine practitioners' skills include translation of pig data entry into pig health and well-being indices, many do not yet have enough familiarity to advise their clients on the adoption of precision livestock farming practices. This review, intended for swine veterinarians and specialists, (1) includes an introduction to algorithms and machine learning, (2) summarizes current literature on relevant sensors and sensor network systems, and drawing from industry pig welfare audit criteria, (3) explains how these applications can be used to improve swine welfare and meet current pork production stakeholder expectations. Swine practitioners, by virtue of their animal and client advocacy roles, interpretation of benchmarking data, and stewardship in regulatory and traceability programs, can play a broader role as advisors in the transfer of precision livestock farming technology, and its implications to their clients.Entities:
Keywords: CSIA; critical criteria; practitioner; precision livestock farming; remote monitoring; swine; welfare
Year: 2019 PMID: 30935123 PMCID: PMC6523486 DOI: 10.3390/ani9040133
Source DB: PubMed Journal: Animals (Basel) ISSN: 2076-2615 Impact factor: 2.752
Figure 1Depth camera sample image containing a sow.
Figure 2Painted numbers and ear tag for optical character recognition on a sow.
Figure 3Set of images used for facial recognition training.
A comparison between various sensors and their applications.
| Hardware Comparisons | |||
|---|---|---|---|
| Sensor Device and Manufacturer examples | Features | Fallbacks | Applications |
|
| |||
| 2D (RGB) | — Useful for fine positional and color variational data | — Requires filtering to obtain useful information | — Optical character recognition |
|
| |||
| Infrared Imaging (IR) | — Useful for biological process observation and night vision | — Expensive | — Remote temperature sensing |
| Thermistors | — Useful for temperature fluctuations | — Slow to sense changes | — Contact temperature sensing |
|
| |||
| — Soundtalks® | — Useful for sound/frequency fluctuations | — Easily corrupted by noise | — Monitoring periodic physiological process (in pens and/or barns) |
|
| |||
| Exmples of WSN | — Useful for motion tracking | — Requires external processing to obtain displacement and velocity data | — Motion detection/observation |
Figure 4Wireless sensor network structure.