| Literature DB >> 26848693 |
Janice M Siegford1, John Berezowski2, Subir K Biswas3, Courtney L Daigle4, Sabine G Gebhardt-Henrich5, Carlos E Hernandez6, Stefan Thurner7, Michael J Toscano8.
Abstract
Tracking individual animals within large groups is increasingly possible, offering an exciting opportunity to researchers. Whereas previously only relatively indistinguishable groups of individual animals could be observed and combined into pen level data, we can now focus on individual actors within these large groups and track their activities across time and space with minimal intervention and disturbance. The development is particularly relevant to the poultry industry as, due to a shift away from battery cages, flock sizes are increasingly becoming larger and environments more complex. Many efforts have been made to track individual bird behavior and activity in large groups using a variety of methodologies with variable success. Of the technologies in use, each has associated benefits and detriments, which can make the approach more or less suitable for certain environments and experiments. Within this article, we have divided several tracking systems that are currently available into two major categories (radio frequency identification and radio signal strength) and review the strengths and weaknesses of each, as well as environments or conditions for which they may be most suitable. We also describe related topics including types of analysis for the data and concerns with selecting focal birds.Entities:
Keywords: RFID; activity; individual; motion; production; tracking
Year: 2016 PMID: 26848693 PMCID: PMC4773737 DOI: 10.3390/ani6020010
Source DB: PubMed Journal: Animals (Basel) ISSN: 2076-2615 Impact factor: 2.752
Summary of strengths, weaknesses, primary and previous applications of radio frequency identification and radio signal strength systems used in laying hens.
| Radio Frequency Identification | Radio Signal Strength | |
|---|---|---|
| Primary application differences | Detects presence or absence of individual at location of antennae | Detects movement of individual through time and space and possibly location |
| Strengths | Possibility to couple with other systems Can detect multiple individuals simultaneously No external power source or battery needed (for bird-mounted component) Relatively easy installation and mobile Sensor can be placed at several points on the body | Ability to couple with various other observations including: accelerometry (described in this article), light, temperature, humidity |
| Weaknesses | Water or metal can dampen signal strength Quickly moving (or immobile) animals difficult to detect Requires multiple antennae to detect direction of movement Expensive, though depends on system Mainly in high frequency systems (>13.56 MHz), conspecifics can block signal causing missed readings | Stationary receivers ≥1 meter apart Overlapping detection fields Short battery life Metal can obstruct detection causing data loss Sensor must be placed on back of hen for best signal capture |
| Previous applications | Passage through a pop hole Egg laying in a nest box | Location relative to other sensors (both stationary and mobile) Individual behavior and movement in large groups, including within 3 dimensions |
Figure 1Visual clustering of activities in a 2D feature space for Y and X axis accelerometer data [38]. The different behavioral activities appear as different distinct clusters, allowing them to accurately be distinguished from each other. The most difficult behaviors to distinguish are feeding and drinking, both of which involve a stationary body with pecking motion of the head (upwards in the case of drinking and downwards in the case of feeding). Data were collected from six sensor-wearing hens over several days to capture multiple performances of an activity by each hen. The clusters shown here correspond to classifications using the 50% test dataset.
Figure 2Layer 1 (a) and Layer 2 (b) classification systems to remotely identify performance of behaviors within 3 and 4 seconds windows [38]. Layer-1 accuracy was higher than Layer-2 accuracy, and in most cases, 4 s windows were more accurate than 3 s windows. Static behaviors (sit/sleep and stand) could accurately be distinguished from dynamic behaviors (walk and dust bathe) and both of these categories could be distinguished from resource use behaviors (feed and drink).
Figure 3Schematic diagram of the funnel nest box [55].
Figure 4View of a hen entering the funnel nestbox (left) and positioning herself to lay an egg (right).
Figure 5Arrangement of the various components within the body-worn RSSI sensor system. Hens wear small (10 g) sensors on their backs attached via a figure eight harness. These sensors actively transmit information to stationary receivers, which communicate with a base station. Activity and location analyses are then performed using analytical software to classify accelerometer data into specific behavioral activities and locations relative to other hens and the stationary receivers.