The algorithm you are looking for is keypoint detector and matcher. There are several algorithms that can do the job (SURF,SIFT,ORB,FREAK etc) the process involves three steps.
Feature Point detection.
Generation of Descriptors for each keypoint of template image and target image.
The algorithms for the two stages are SURF, SIFT, ORB etc See opencv Feature detection section for more details.
- Matching of the keypoints in two images
This can be done by using KNN match, FLANN based matcher, BRUTEFORCE matcher etc.
Here are the links in matlab and opencv.
The reason for SURF algorithm failure in your case:
While matching two images are objects in two different scenarios, we need to take the following conditions into consideration:
Which transformation has occurred between the images, is it affine or perspective or just a translation or rotation etc...
In your case it is looking like perspective transformation...
Does images are rich in texture and quality.
In your case images are rich in texture but poor in quality or loss of details may be they were captured by low resolution camera.
See my answer for a similar question Here
My first suggestion is First capture a data set that has more quality. So that it is easier for Keypoint detection algorithm to find Good Key points, Once a basic algorithm is ready , then go for improvements to make it work for Poor resolution datasets.