There are a lot of ways to test code that interacts with a database.
The repository pattern is one method of creating a facade over the data access code. It makes it easy to stub/mock out the repository during test. This is useful when a piece of business logic needs tested in isolation and dummy values can help test different branches of the code.
Fake databases (in-memory or local files) are less common because there needs to be some "middle-ware" that knows how to read data from a real database and a fake database. It usually just makes sense to have a repository over the whole thing and mock out the repository. This approach is more feasible in some older systems where there is an existing infrastructure. For instance, you use a real database and then switch over to a fake database for test performance reasons.
Another option is using an actual database, populating it with bogus data. This approach is slower and requires writing a lot of scripts. However, this approach is fairly common as part of integration testing. I used to write a lot of "transactional" tests where I used a database transaction to rollback changes after running my tests. I'd write one large test that collectively performed all of my CRUD operations on a particular table.
The last approach makes sense when you are testing the code that converts SQL results into your objects. Your SQL could be invalid (or you use the wrong stored procedure name). It is also easy to forget to check for nulls, perform an invalid cast, etc. when mapping to objects. This code should be tested at some point. An ORM can help alleviate a lot of this testing.
I am typically pretty lazy these days. I use repositories. Most of my data layer code is touched when performing actual integration tests (hitting a real database with dummy data), so I don't bother testing individual database calls (no more transactional tests). I also use ORMs for doing most of my SELECT statements. I think a lot of the industry is moving towards this more lazy approach.