A data warehouse is a database with a design that makes analyzing data easier† and faster, often with data from multiple sources. It usually has a dimensional model, meaning fact tables and dimension tables.
OLAP is a set of operations that one can do on a data set, such as pivoting, slicing, dicing, drilling. For example, one can do OLAP operations with Excel PivotTables. There are certain SQL statements which are "for OLAP", such as
group by CUBE(),
group by ROLLUP(), and
group by GROUPING SETS(), as well as the various window functions
An OLAP Server is a type of server software that facilitates OLAP operations, for example with caching and query re-writing. OLAP operations are often expressed in MDX, and your OLAP server might translate MDX into regular SQL for your database. Or it might work against its own binary file format. A dimensional model inside an OLAP server is called an OLAP cube
You can have a data warehouse and not use OLAP at all (you just run reports).
You can also do OLAP operations on something other than a data warehouse, such as a flat file.
Are they different approach for same thing?
No, a data warehouse is a place to store data in an easily analyzable format, and OLAP is a method to analyze data.
Are one of them deprecated in comparison with other?
No, they compliment each other in that a data warehouse makes it easy to analyze data using OLAP, and OLAP can make analyzing a data warehouse more useful.
Is there any performance issues in one of them?
Yes. A data warehouse is meant to store lots and lots of data, and thus it will take time to query. Performance can be improved by using indexes or a columnar db, caching, RAID 10 SSDs, partitioning, and by pre-aggregating some data.
See also: https://dba.stackexchange.com/questions/45655/what-are-measures-and-dimensions-in-cubes
† as opposed to making transactions easier/more integral