Finding pixels that make an image unique within a list, can you improve on brute force?
Suppose I have a list of strings where each string is
- exactly 4 characters long and
- unique within the list.
For each of these strings I want to identify the position of the characters within the string that make the string unique.
So for a list of three strings
abcd
abcc
bbcb
For the first string I want to identify the character in 4th position d since d does not appear in the 4th position in any other string.
For the second string I want to identify the character in 4th position c.
For the third string it I want to identify the character in 1st position b AND the character in 4th position, also b.
This could be concisely represented as
abcd -> ...d
abcc -> ...c
bbcb -> b..b
If you consider the same problem but with a list of binary numbers
0101
0011
1111
Then the result I want would be
0101 -> ..0.
0011 -> .0..
1111 -> 1...
Staying with the binary theme I can use XOR to identify which bits are unique within two binary numbers since
0101 ^ 0011 = 0110
which I can interpret as meaning that in this case the 2nd and 3rd bits (reading left to right) are unique between these two binary numbers. This technique might be a red herring unless somehow it can be extended to the larger list.
A brute-force approach would be to look at each string in turn, and for each string to iterate through vertical slices of the remainder of the strings in the list.
So for the list
abcd
abcc
bbcb
I would start with
abcd
and iterate through vertical slices of
abcc
bbcb
where these vertical slices would be
a | b | c | c
b | b | c | b
or in list form, "ab", "bb", "cc", "cb".
This would result in four comparisons
a : ab -> . (a is not unique)
b : bb -> . (b is not uniq开发者_如何学运维ue)
c : cc -> . (c is not unique)
d : cb -> d (d is unique)
or concisely
abcd -> ...d
Maybe it's wishful thinking, but I have a feeling that there should be an elegant and general solution that would apply to an arbitrarily large list of strings (or binary numbers). But if there is I haven't yet been able to see it.
I hope to use this algorithm to to derive minimal signatures from a collection of unique images (bitmaps) in order to efficiently identify those images at a future time. If future efficiency wasn't a concern I would use a simple hash of each image.
Can you improve on brute force?
Edit The approach I'm warming to is building a map of pixels to images
sprawl[Tuple<x=10, y=33,color=f1fefd>] => {
image17,
image23,
...
}
sprawl[Tuple<x=10, y=34,color=f1fef0>] => {
image11
...
}
and then using that map to identify the minimal set of signature pixels for each image.
If a pixel (identified by x, y, color) references just one image then I have found a perfect (minimal) signature for that image.
It's more complicated if an image has no unique pixels, but since I know all images are unique within the list I should be able to combine two or more pixel references (but as few as possible) to deduce the image.
Update
I've been working on an algorithm for this. My problem is very similar to this one, and I've written up my algorithm as an answer to that question. This update is to flag the attention of anyone still following (I see five bookmarks). I'm working on this in isolation so any and all feedback is welcome, even if just to observe that I haven't made myself clear!
You can generate a two dimensional array which will contain the number of times each character appears in each position (0-3). For example, arr[1,3]
will contain the number of times the digit/character 1
appears in the last position.
Then for each string s
, go over all characters in the string. The ones which appear only once in that position according to the array are the unique characters for that string. In other words, if arr[s[i], i]==1
Then string s
is unique in position i
.
This will give you the solution in linear time, while the algorithm you gave will take quadratic time.
If your goal is to identify images later, you could create a very fast hash of the image by picking predefined points to serve as identity pixels.
for example, you could have a structure (class, struct, doesn't matter what language) as follows:
structure ImageHash {
int x_pixels, y_pixels;
u_long hash;
void createHash(Image img) {
x_pixels = img.x_pixels;
y_pixels = img.y_pixels;
for(int i = 1; i < 5; i++) {
int x = x_pixels / i;
for(int j = 1; j < 5; j++) {
int y = y_pixels / j;
int r = img.getPixelRed(x,y);
int g = img.getPixelGreen(x,y);
int b = img.getPixelBlue(x,y);
hash = (hash * 31) ^ (r^g^b);
}
}
}
}
This sort of "incomplete hash" will allow you identify possible identities, and then you can do the expensive, full comparison sparingly as required.
Expand the incomplete hash as necessary.
This problem can be solved by trie, or prefix tree.
See Trie - Wikipedia, the free encyclopedia
For the 3 strings in your example:
abcd
abcc
bbcb
will be turned into a trie tree (where ^ denotes the root of the tree):
^--a-b-c-d
\ \
\ c
\
b-b-c-b
The path to the node where it branch off are the common prefix. The node after the last branch point is what makes a particular string unique. In this case, they are d, c, b.
I assume the order of string is not important for you, that you compares all strings to find the uniqueness, not just the neighboring string.
The complexity should be O(n x m). But this will probably affected by the domain of the characters in your string.
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