The answer is unfortunately: Your consideration is completely right in every point. You have to store Nodes/Vertices in one table, and Edges referencing a FromNode and a ToNode to convert a graph data structure to a relational data structure. And you are also right, that this ends up in a large number of lookups, because you are not able to partition it into subgraphs, that might be queried at once. You have to traverse from Node to Edge to Node to Edge to Node...and so on (Recursively, while SQL is working with Sets).
The point is...
Relational, Graph oriented, Object oriented, Document based are different types of data structures that meet different requirements. Thats what its all about and why so many different NoSQL Databases (most of them are simple document stores) came up, because it simply makes no sense to organize Bigdata in a relational way.
Alternative 1 - Graph oriented database
But there are also graph oriented NoSQL databases, which make the graph data model a first class citizen like OrientDB which I am playing around with a little bit at the moment. The nice thing about it is, that although it persists data as a graph, it still can be used in a relational or even object oriented or document oriented way also (i.e. by querying with plain old SQL). Nevertheless Traversing the graph is the optimal way to get data out of it for sure.
Alternative 2 - working with graphs in memory
When it comes to fast routing, routing frameworks like Graphhopper build up the complete Graph (Billions of Nodes) inside memory. Because Graphhopper uses a MemoryMapped Implementation of its GraphStore, that even works on Android Devices with only some MB of Memory need. The complete graph is read from database into memor at startup, and routing is then done there, so you have no need to lookup the database.