A deep learning-based approach for real-time rodent detection and behaviour classification

被引:2
作者
Cocoma-Ortega, J. Arturo [1 ]
Patricio, Felipe [2 ]
Limon, Ilhuicamina Daniel [2 ]
Martinez-Carranza, Jose [1 ]
机构
[1] Inst Nacl Astrofis Opt & Electr, Dept Computat Sci, Luis Enrique Erro 1, Puebla 72840, Mexico
[2] Benemerita Univ Autonoma Puebla, Lab Neurofarmacol, Av San Claudio, Puebla 72570, Mexico
关键词
Deep learning; Rat behaviours; Locomotion; Real-time; OPEN-FIELD; LOCOMOTOR-ACTIVITY; DETECTION SYSTEM; VIDEO TRACKING; ANXIETY;
D O I
10.1007/s11042-022-12664-y
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Animal models are helpful to evaluate the effects of some drugs in the treatment of brain diseases, such as the case of the Open Field Maze. Usually, these tests are recorded in video and analysed afterwards to carry out manual annotations about the activity and behaviour of the rat. Usually, these videos must be watched repeatedly to ensure correct annotations, but they are prone to become a tedious task and are highly likely to produce human errors. Existing commercial systems for automatic detection of the rat and classification of its behaviours may become inaccessible for research teams that cannot afford the license cost. Motivated by the latter, we propose a methodology for simultaneous rat detection and behaviour classification using inexpensive hardware in this work. Our proposal is a Deep Learning-based two-step methodology to simultaneously detect the rat in the test and classify its behaviour. In the first step, a single shot detector network is used to detect the rat; then, the systems crop the image using the bounding box to generate a sequence of six images that input our BehavioursNet network to classify the rodent's behaviour. Finally, based on the results of these steps, the system generates an ethogram for the complete video, a trajectory plot, a heatmap plot for most visited regions and a video showing the rat's detection and its behaviours. Our results show that it is possible to perform these tasks at a processing rate of 23 Hz, with a low error of 6 pixels in the detection and a first approach to classify ambiguous behaviours such as resting and grooming, with an average precision of 60%, which is competitive with that reported in the literature.
引用
收藏
页码:30329 / 30350
页数:22
相关论文
共 70 条
[11]  
da Silva Monteiro JP, 2012, THESIS FACULTY ENG U
[12]  
Dai Z., 2021, 35 C NEURAL INFORM P
[13]  
de Menezes R, 2020, AN 47 SEM INT SOFTW, P162
[14]   Underwater image enhancement using blending of CLAHE and percentile methodologies [J].
Garg, Diksha ;
Garg, Naresh Kumar ;
Kumar, Munish .
MULTIMEDIA TOOLS AND APPLICATIONS, 2018, 77 (20) :26545-26561
[15]  
Geuther BQ, 2018, ROBUST MOUSE TRACKIN, DOI 10.1101/336685
[16]   Action detection using a neural network elucidates the genetics of mouse grooming behavior [J].
Geuther, Brian Q. ;
Peer, Asaf ;
He, Hao ;
Sabnis, Gautam ;
Philip, Vivek M. ;
Kumar, Vivek .
ELIFE, 2021, 10
[17]  
Giancardo L, 2012, INT C PATT RECOG, P2520
[18]   A new rat-compatible robotic framework for spatial navigation behavioral experiments [J].
Gianelli, Sam ;
Harland, Bruce ;
Fellous, Jean-Marc .
JOURNAL OF NEUROSCIENCE METHODS, 2018, 294 :40-50
[19]   SOLID-STATE ANIMAL DETECTION SYSTEM - ITS APPLICATION TO OPEN-FIELD ACTIVITY AND FREEZING BEHAVIOR [J].
GIULIAN, D ;
SILVERMAN, G .
PHYSIOLOGY & BEHAVIOR, 1975, 14 (01) :109-112
[20]   Automated Tracking of Animal Posture and Movement during Exploration and Sensory Orientation Behaviors [J].
Gomez-Marin, Alex ;
Partoune, Nicolas ;
Stephens, Greg J. ;
Louis, Matthieu .
PLOS ONE, 2012, 7 (08)