I would argue that it depends - ORMs can cause performance issues in some cases, but to blame them generally for all performance issues probably isn't accurate.
I see two main performance pitfalls for ORM usage:
1) Getting too much data back
In most cases, you are getting more data back than you really need. Typically, this isn't a huge problem, but if the model is mapped improperly, you can sometimes get large graphs of data when you only wanted one little piece.
2) Being unable to tune the SQL generated by the ORM
Sometimes ORMs don't generate the most optimal SQL for certain situations, and it is difficult or impossible to modify it. I've mitigated this in the past by being relatively quick to bypass the ORM in situations where some SQL tuning will net large performance gains.
To your other point - that ORMs make it difficult to utilize caching - this is actually a source of (sometimes significant) performance gains for many ORMs, since most ORMs typically include some sort of built-in caching. For example, Hibernate has a first level cache (the session/persistence context) and can be easily configured to use a second-level cache as well.