| dc.description.abstract | Intensive	farming	methods”	used	in	modern	day	dairy	farms	have	resulted	in	a	need	for	close	monitoring	of	cattle	health	and	early	identification	of	diseases.	The	labour	shortage	faced	by	dairy	industry,	globally,	has	left	farmers	with	no	option	but	to	go	for	automation.	Current	semi-automated	systems	used	for	cattle	health	monitoring,	lack	a	non-invasive,	real-time	information	system	for	individual	health	monitoring	of	cattle.	As	an	attempt	to	address	these	issues,	this	research	was	done	with	the	objective	of	finding	out	the	suitability	and	feasibility	of	an	“Autonomous	Mobile	Robot”	to	monitor	cattle	individually	and	update	the	stakeholders	with	real-time	information.	The	design	of	the	system	involved	a	robot,	programmed	to	navigate	from	one	cow	to	another	while	cattle	are	being	fed	in	“feeding	stations”.	A	visual-imaging	camera	and	a	thermographic	camera	were	used	as	sensors	to	detect	a	set	of	physiological	indicators	corresponding	to	symptoms	of	popular	cattle	diseases.	A	“face	recognition	algorithm”	was	developed	for	cattle	and	images	taken	from	both	visual	and	thermographic	cameras	were	processed	to	extract	information	about	health	condition	of	each	cow.	The	information	would	then	be	communicated	to	the	herdsmen	via	internet	on	a	real-time,	simplex	communication	system.	Sensors	used	were	capable	of	detecting	two	different	physical	parameters,	namely,	red	color	on	facial	area	and	body	temperature	of	cattle.	The	algorithms	were	simulated	using	real-world	imagery.	Detection	rates	obtained	through	simulations	proved	the	algorithms	to	be	effective.	Despite	the	high	detection	rates,	some	limitations	which	could	hinder	system	performance	such	as	poor	barn	conditions	and	inadequate	system	parameters	were	identified.	However,	as	the	barn	conditions	and	design	parameters	could	be	modified	and	improved,	the	conclusion	is	that	the	mobile	robot	based	system	can	fulfil	the	objectives	of	the	research. | en_US |