You need to consider that Azure Table Storage (ATS) is storage-as-a-service. You don't need to set up any servers to manage the storage and related CRUD operations. This is handled for you by Azure, as ATS is a massive multi-tenant system. You simply ask for an account, receive an endpoint (plus primary & secondary key), and off you go, paying about 7 cents per GB (and a penny per 100K transactions, which is fairly insignificant).
With MongoDB, you'd need to stage your own server(s), whether in AWS or in Azure (or on-premises or anywhere else), as well as provisioning storage. Out-of-the-box, today's cloud providers don't have a native MongoDB-as-a-Service offering. Your cost basis is now much higher than ATS, and you're responsible for backups/snapshots, MongoDB maintenance, etc. Even a bare-bones MongoDB deployment will cost you at least two virtual machine instances (a standalone server in production is not advisable due to periodic downtime). The smallest Azure instances are $0.02 / hour or about $14 monthly x 2, for a minimum footprint of about $30 / month (this is a low end virtual machine with under 1GB RAM; it will not provide you with high-performance MongoDB, but may work great for just a point-of-presence web site or blog with little traffic). Sacrificing availability, you could run a single extra-small instance at $14 / month plus storage cost (which needs to be in durable storage, so you're talking about 7 cents / GB / month).
Now, you mention MongoLab. They do have MongoDB-as-a-Service, and have built a multi-tenant hosting solution, and their service is available on several clouds, including Azure. The price they charge accounts for their investment in virtual machine instances, storage, and bandwidth, as well as server maintenance, backup strategies, support, high availability, monitoring, etc.
I wouldn't get too fixated on storage cost being your only determining factor. If you need to do any type of complex queries requiring, say, multiple indexed fields, with ATS you'll need to construct additional tables to provide those indexes (or you'll end up doing partition scans or table scans to find the content you need). MongoDB has a very powerful searching and aggregation engine. If your app needs this, you might spend more money on developer-time engineering and maintaining additional table storage complexity, vs. using MongoDB and having your app running "today." If, on the other hand, you have data that fits really well in table storage, where partition + row key covers the vast majority of your search cases, and you can take advantage of entity group transactions for atomic updates, you should consider table storage for not only cost but for scale (200TB per storage account) and performance.
I hope this helps...