show/hide this revision's text 4 Restored the sample images

The following is my approach to the problem and I must admit that this was quite an interesting project to work on, it is definitely outside of my normal realm of work and has given me a something new to learn about.

The basic idea behind mine is as follows:

  1. Down-sample the image gray-scale such that there were a total of 16 different shades
  2. Preform RLE on the image
  3. Pack the results into the UTF-16 characters
  4. Preform RLE on the packed results to remove any duplication of characters

It turns out that this does work, but only to a limited extent as you can see from the sample images below. In terms of output, what follows is a sample tweet, specifically for the Lena image shown in the samples.

乤乤万乐唂伂倂倁企儂2企倁3企倁2企伂8企伂3企伂5企倂倃伂倁3企儁企2伂倃5企倁3企倃4企倂企倁企伂2企伂5企倁企伂쥹皗鞹鐾륶䦽阹럆䧜椿籫릹靭욶옷뎷歩㰷歉䴗鑹㞳鞷㬼獴鏙돗鍴祳㭾뤶殞焻�乹Ꮛ靆䍼

As you can see, I did try and constrain the character set a bit; however, I ran into issues doing this when storing the image color data. Also, this encoding scheme also tends to waste a bunch of bits of data that could be used for additional image information.

In terms of run times, for small images the code is extremely fast, about 55ms for the sample images provided, but the time does increase with larger images. For the 512x512 Lena reference image the running time was 1182ms. I should note that the odds are pretty good that the code itself isn't very optimized for performance (e.g. everything is worked with as a Bitmap) so the times could go down a bit after some refactoring.

Please feel free to offer me any suggestions on what I could have done better or what might be wrong with the code. The full listing of run times and sample output can be found at the following location: http://code-zen.info/twitterimage/

Update One

I've updated the the RLE code used when compressing the tweet string to do a basic look back and if so so use that for the output. This only works for the number value pairs, but it does save a couple of characters of data. The running time is more or less the same as well as the image quality, but the tweets tend to be a bit smaller. I will update the chart on the website as I complete the testing. What follows is one of the example tweet strings, again for the small version of Lena:

乤乤万乐唂伂倂倁企儂2企倁3企倁ウ伂8企伂エ伂5企倂倃伂倁グ儁企2伂倃ガ倁ジ倃4企倂企倁企伂ツ伂ス倁企伂쥹皗鞹鐾륶䦽阹럆䧜椿籫릹靭욶옷뎷歩㰷歉䴗鑹㞳鞷㬼獴鏙돗鍴祳㭾뤶殞焻�乹Ꮛ靆䍼

Update Two

Another small update, but I modified the code to pack the color shades into groups of three as opposed to four, this uses some more space, but unless I'm missing something it should mean that "odd" characters no longer appear where the color data is. Also, I updated the compression a bit more so it can now act upon the entire string as opposed to just the color count block. I'm still testing the run times, but they appear to be nominally improved; however, the image quality is still the same. What follows is the newest version of the Lena tweet:

2乤万乐唂伂倂倁企儂2企倁3企倁ウ伂8企伂エ伂5企倂倃伂倁グ儁企2伂倃ガ倁ジ倃4企倂企倁企伂ツ伂ス倁企伂坹坼坶坻刾啩容力吹婩媷劝圿咶坼妛啭奩嗆婣冷咛啫凃奉佶坍均喳女媗决兴宗喓夽兴唹屹冷圶埫奫唓坤喝奎似商嗉乃

StackOverflow Logo Cornell Box Lena Mona Lisa

show/hide this revision's text 3 Updated due to compression and encoding changes; added 1 characters in body

The following is my approach to the problem and I must admit that this was quite an interesting project to work on, it is definitely outside of my normal realm of work and has given me a something new to learn about.

The basic idea behind mine is as follows:

  1. Down-sample the image gray-scale such that there were a total of 16 different shades
  2. Preform RLE on the image
  3. Pack the results into the UTF-16 characters
  4. Preform RLE on the packed results to remove any duplication of characters

It turns out that this does work, but only to a limited extent as you can see from the sample images below. In terms of output, what follows is a sample tweet, specifically for the Lena image shown in the samples.

乤乤万乐唂伂倂倁企儂2企倁3企倁2企伂8企伂3企伂5企倂倃伂倁3企儁企2伂倃5企倁3企倃4企倂企倁企伂2企伂5企倁企伂쥹皗鞹鐾륶䦽阹럆䧜椿籫릹靭욶옷뎷歩㰷歉䴗鑹㞳鞷㬼獴鏙돗鍴祳㭾뤶殞焻�乹Ꮛ靆䍼

As you can see, I did try and constrain the character set a bit; however, I ran into issues doing this when storing the image color data. Also, this encoding scheme also tends to waste a bunch of bits of data that could be used for additional image information.

In terms of run times, for small images the code is extremely fast, about 55ms for the sample images provided, but the time does increase with larger images. For the 512x512 Lena reference image the running time was 1182ms. I should note that the odds are pretty good that the code itself isn't very optimized for performance (e.g. everything is worked with as a Bitmap) so the times could go down a bit after some refactoring.

Please feel free to offer me any suggestions on what I could have done better or what might be wrong with the code. The full listing of run times and sample output can be found at the following location: http://code-zen.info/twitterimage/

Update One

I've updated the the RLE code used when compressing the tweet string to do a basic look back and if so so use that for the output. This only works for the number value pairs, but it does save a couple of characters of data. The running time is more or less the same as well as the image quality, but the tweets tend to be a bit smaller. I will update the chart on the website as I complete the testing. What follows is one of the example tweet strings, again for the small version of Lena:

乤乤万乐唂伂倂倁企儂2企倁3企倁ウ伂8企伂エ伂5企倂倃伂倁グ儁企2伂倃ガ倁ジ倃4企倂企倁企伂ツ伂ス倁企伂쥹皗鞹鐾륶䦽阹럆䧜椿籫릹靭욶옷뎷歩㰷歉䴗鑹㞳鞷㬼獴鏙돗鍴祳㭾뤶殞焻�乹Ꮛ靆䍼

Update Two

Another small update, but I modified the code to pack the color shades into groups of three as opposed to four, this uses some more space, but unless I'm missing something it should mean that "odd" characters no longer appear where the color data is. Also, I updated the compression a bit more so it can now act upon the entire string as opposed to just the color count block. I'm still testing the run times, but they appear to be nominally improved; however, the image quality is still the same. What follows is the newest version of the Lena tweet:

2乤万乐唂伂倂倁企儂2企倁3企倁ウ伂8企伂エ伂5企倂倃伂倁グ儁企2伂倃ガ倁ジ倃4企倂企倁企伂ツ伂ス倁企伂坹坼坶坻刾啩容力吹婩媷劝圿咶坼妛啭奩嗆婣冷咛啫凃奉佶坍均喳女媗决兴宗喓夽兴唹屹冷圶埫奫唓坤喝奎似商嗉乃

Sample Images

show/hide this revision's text 2 Updated with new encoded tweets

The following is my approach to the problem and I must admit that this was quite an interesting project to work on, it is definitely outside of my normal realm of work and has given me a something new to learn about.

The basic idea behind mine is as follows:

  1. Down-sample the image gray-scale such that there were a total of 16 different shades
  2. Preform RLE on the image
  3. Pack the results into the UTF-16 characters
  4. Preform RLE on the packed results to remove any duplication of characters

It turns out that this does work, but only to a limited extent as you can see from the sample images below. In terms of output, what follows is a sample tweet, specifically for the Lena image shown in the samples.

乤乤万乐唂伂倂倁企儂2企倁3企倁2企伂8企伂3企伂5企倂倃伂倁3企儁企2伂倃5企倁3企倃4企倂企倁企伂2企伂5企倁企伂쥹皗鞹鐾륶䦽阹럆䧜椿籫릹靭욶옷뎷歩㰷歉䴗鑹㞳鞷㬼獴鏙돗鍴祳㭾뤶殞焻�乹Ꮛ靆䍼

As you can see, I did try and constrain the character set a bit; however, I ran into issues doing this when storing the image color data. Also, this encoding scheme also tends to waste a bunch of bits of data that could be used for additional image information.

In terms of run times, for small images the code is extremely fast, about 55ms for the sample images provided, but the time does increase with larger images. For the 512x512 Lena reference image the running time was 1182ms. I should note that the odds are pretty good that the code itself isn't very optimized for performance (e.g. everything is worked with as a Bitmap) so the times could go down a bit after some refactoring.

Please feel free to offer me any suggestions on what I could have done better or what might be wrong with the code. The full listing of run times and sample output can be found at the following location: http://code-zen.info/twitterimage/

Update

I've updated the the RLE code used when compressing the tweet string to do a basic look back and if so so use that for the output. This only works for the number value pairs, but it does save a couple of characters of data. The running time is more or less the same as well as the image quality, but the tweets tend to be a bit smaller. I will update the chart on the website as I complete the testing. What follows is one of the example tweet strings, again for the small version of Lena:

乤乤万乐唂伂倂倁企儂2企倁3企倁ウ伂8企伂エ伂5企倂倃伂倁グ儁企2伂倃ガ倁ジ倃4企倂企倁企伂ツ伂ス倁企伂쥹皗鞹鐾륶䦽阹럆䧜椿籫릹靭욶옷뎷歩㰷歉䴗鑹㞳鞷㬼獴鏙돗鍴祳㭾뤶殞焻�乹Ꮛ靆䍼

Sample Images

show/hide this revision's text 1 [made Community Wiki]