This is frequently done in non-relational dimensionally modeled data warehouses - a date dimension table gives a number of feature which allow you to easily aggregate quickly on facts by additional columns stored in the date dimension, like year, quarter, etc. It often contains dozens of columns which mean that you are not required to apply code to determine if it's a work day or a holiday or the day name of the week or anything else. It's a classic space/time tradeoff and pays off well for data in a limited date range of a couple hundred years like you might see in a bank or business. It is not really feasible for an arbitrary date range of many hundreds of years.
Note that some RDBMS systems have a more efficient date-only data type (SQL Server has one as of SQL Server 2008). Similarly, often the PK in the date dimension is an integer in natural form of YYYYMMDD, which takes considerably less space than a regular datetime column.
There can be advantages to such a scheme. You can have special reserved dimensions for certain dates with very specific semantics - -1 - unknown, -2 - invalid, -3 - waiting etc., while a regular date column just has ability to store a valid date or NULL.
I don't think joins are necessarily an argument against this for performance reasons, after all, you will likely have a very efficient indexing on this and it's going to result in index seeks. On the other hand, a typical date dimension table has many columns, and in an OLTP scenario, you rarely need much of that.
If your application does heavy date analysis and reporting, I would consider a date dimension (or call it a lookup table, since you are likely not in a dimensional/data warehouse scenario). Otherwise, I would not - most people would not be comfortable with this, and exposure to dimensional modeling techniques is not common amongst many (most?) OLTP practitioners, and they will not see the benefits, although there are clearly many.
I see in your reply to another question that you need to log data on a minute basis. Often, an orthogonal time dimension is set up in a similar way. It is usually also very efficient, with a natural key of the form HHMMSS or just HHMM. This makes it much easier to perform range analysis across days, and with a time table, in particular buckets, especially where such buckets may need to be identified with additional attributes.
Again, SQL Server 2008 has a separate time-only data type, so simply having DATE and TIME split in your table may be more than sufficient.