You need to define carefully what 'perceptually similar' means to you, before trying to find a measurable entity that captures that. Imagine a picture of of a grass field under a blue sky with a horse. Should your application retrieve all horse pictures? Or all pictures with green grass and a blue sky? In the latter case, the above mentioned color histograms are a good start. Alternatively you could look at gaussian mixture models (GMM), they are used quite a bit in retrieval. This code could be a starting point and this article Image retrieval using color histograms
generated by Gauss mixture vector quantization
More complicated is the so called "bag of words" or "visual words" approach. It is increasingly used for image categorization and identification. This algorithm usually starts by detecting robust points in an image, meaning that these points will survive certain image distortions. Example popular algorithms are SIFT and SURF. The region around these found points is captured with a descriptor, which could for example be a smart histogram.
In the most simple form, one can collect all data from all descriptors from all images and cluster them, for example using k-means. Every original image then has descriptors that contribute to a number of clusters. The centroids of these clusters, i.e. the visual words, can be used as a new descriptor for the image. The VLfeat website contains a nice demo of this approach, classifying the caltech 101 dataset. Also noteworthy, are results and software from Caltech itself.