Updated following discussion in comments
The cause of the problem here is very low cardinality of the
SQL indexes are very good at quickly narrowing down values, but they have problems when you have lots of records with the same value.
You can think of it as like the index of a phone book - if you want to find "Smith, John" you first find that there are lots of names that begin with S, and then pages and pages of people called Smith, and then lots of Johns. You end up scanning the book.
This is compounded because the index in the phone book is clustered - the records are sorted by surname. If instead you want to find everyone called "John" you'll be doing a lot of looking up.
Here there are 30 million records but only 30 different values, which means that the best possible index is still returning around 1 million records - at that sort of scale it might as well be a table-scan. Each of those 1 million results is not the actual record - it's a lookup from the index to the table (the page number in the phone book analogy), which makes it even slower.
A high cardinality index (say for full date of birth), rather than year would be much quicker.
This is a general problem for all OLTP relational databases:
low cardinality + huge datasets = slow queries because index-trees don't help much.
In short: there's no significantly quicker way to get the count using T-SQL and indexes.
You have a couple of options:
1. Data Aggregation
Either OLAP/Cube rollups or do it yourself:
select Born, count(*)
group by Born
The pro is that cube lookups or checking your cache is very fast. The problem is that the data will get out of date and you need some way to account for that.
2. Parallel Queries
Split into two queries:
WHERE Born = '1970'
SELECT TOP 30 *
WHERE Born = '1970'
Then run these either in parallel server side, or add it to the user interface.
This problem is one of the big advantages no-SQL solutions have over traditional relational databases. In a no-SQL system the
Person table is federated (or sharded) across lots of cheap servers. When a user searches every server is checked at the same time.
At this point a technology change is probably out, but it may be worth investigating so I've included it.
I have had similar problems in the past with databases of this kind of size, and (depending on context) I've used both options 1 and 2. If the total here is for paging then I'd probably go with option 2 and AJAX call to get the count.