straight forward answer, you won't be able to do it.
If I really want to SPAM your "like" button, I will find a way to do so, especially if you're not forcing me to be signed in (I used to write pretty good bots and were pretty efficient spamming big link submission sites).
What you need to do, if you really want to prevent spammers from spamming this feature efficiently (efficiency is the keyword here because spammers can still spam your feature, but their likes won't count) is to log every IP that likes a post along with its geographical information (it's not always 100% accurate, but it's a good start) and then run a process in the background that checks for suspicious origins and penalize such likes (either by assigning them less value, or just subtracting them from the total count).
For example if your main audience is people living in the United States, but one post gets a bunch of likes from Mexico, Salvador, India, Australia, Russia, then it's more than likely that there's a spammer behind a proxy or a network similar to TOR and he/she can change his/her IP address at his/her will.
After a few hundred thousand records, you'll have a good base to start blacklisting IP addresses. I usually use R programming language to get statistical information about my databases.
But then again, a good spammer could use a list of IP addresses of compromised computers coming from your audience's country or geographical location, and use those IPs to abuse the feature. Those bots are harder to spot, but you can analyze previous posts and come up with useful metrics as "Likes/comment ratio".
If one post has a huge number of likes, but low number of comments, then it's very probable that someone spammed it, but then again I can program my bot to like AND post a comment so the numbers look natural.
I'm not sure what kind of project you're working on, but if it's something similar to link submission, do not rank (whatever your users are liking) by the number of likes.
The number of likes should only be a factor, you can take a look at how HackerNews or Reddit rank the posts (those projects are open source), but it's a combination between multiple factors.