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Posted to commits@mxnet.apache.org by GitBox <gi...@apache.org> on 2020/08/12 04:53:48 UTC

[GitHub] [incubator-mxnet] rogerdettloff opened a new issue #18911: Image transforms sometimes produce incorrect result

rogerdettloff opened a new issue #18911:
URL: https://github.com/apache/incubator-mxnet/issues/18911


   ## Description
   I've noticed that image transforms like `npx.image.random_flip_left_right` and `npx.image.random_flip_top_bottom` sometimes produce an incorrect result--although, sometimes they work correctly.  Please see my example below...
   
   ### Error Message
   No error message is produced.
   
   ## To Reproduce
   ```
   >>> from mxnet import np, npx
   >>> npx.set_np()
   
   >>> img=np.arange(11*9).reshape(11,9,1)
   
   >>> img[:,:,0]  # have a look at our test image for reference.
   array([[ 0.,  1.,  2.,  3.,  4.,  5.,  6.,  7.,  8.],
          [ 9., 10., 11., 12., 13., 14., 15., 16., 17.],
          [18., 19., 20., 21., 22., 23., 24., 25., 26.],
          [27., 28., 29., 30., 31., 32., 33., 34., 35.],
          [36., 37., 38., 39., 40., 41., 42., 43., 44.],
          [45., 46., 47., 48., 49., 50., 51., 52., 53.],
          [54., 55., 56., 57., 58., 59., 60., 61., 62.],
          [63., 64., 65., 66., 67., 68., 69., 70., 71.],
          [72., 73., 74., 75., 76., 77., 78., 79., 80.],
          [81., 82., 83., 84., 85., 86., 87., 88., 89.],
          [90., 91., 92., 93., 94., 95., 96., 97., 98.]])
   
   >>> img_flip_lr = npx.image.random_flip_left_right(img)
   >>> img_flip_lr[:,:,0]  # correctly flipped image
   array([[ 8.,  7.,  6.,  5.,  4.,  3.,  2.,  1.,  0.],
          [17., 16., 15., 14., 13., 12., 11., 10.,  9.],
          [26., 25., 24., 23., 22., 21., 20., 19., 18.],
          [35., 34., 33., 32., 31., 30., 29., 28., 27.],
          [44., 43., 42., 41., 40., 39., 38., 37., 36.],
          [53., 52., 51., 50., 49., 48., 47., 46., 45.],
          [62., 61., 60., 59., 58., 57., 56., 55., 54.],
          [71., 70., 69., 68., 67., 66., 65., 64., 63.],
          [80., 79., 78., 77., 76., 75., 74., 73., 72.],
          [89., 88., 87., 86., 85., 84., 83., 82., 81.],
          [98., 97., 96., 95., 94., 93., 92., 91., 90.]])
   
   >>> img_flip_lr = npx.image.random_flip_left_right(img)  # try again...
   >>> img_flip_lr[:,:,0]  # sometimes I get a messed-up result...
   array([[ 8.0000000e+00,  7.0000000e+00,  6.0000000e+00,  5.0000000e+00,
            4.4816047e-38,  3.0000000e+00,  2.0000000e+00,  1.0000000e+00,
            0.0000000e+00],
          [ 1.7000000e+01,  1.6000000e+01,  1.5000000e+01,  1.4000000e+01,
            5.9144397e-38,  1.2000000e+01,  1.1000000e+01,  1.0000000e+01,
            9.0000000e+00],
          [ 2.6000000e+01,  2.5000000e+01,  2.4000000e+01,  2.3000000e+01,
            7.3440759e-34,  2.1000000e+01,  2.0000000e+01,  1.9000000e+01,
            1.8000000e+01],
          [ 3.5000000e+01,  3.4000000e+01,  3.3000000e+01,  3.2000000e+01,
            4.8542180e-32,  3.0000000e+01,  2.9000000e+01,  2.8000000e+01,
            2.7000000e+01],
          [ 4.4000000e+01,  4.3000000e+01,  4.2000000e+01,  4.1000000e+01,
           -5.2694353e-17,  3.9000000e+01,  3.8000000e+01,  3.7000000e+01,
            3.6000000e+01],
          [ 5.3000000e+01,  5.2000000e+01,  5.1000000e+01,  5.0000000e+01,
            9.3095263e-41,  4.8000000e+01,  4.7000000e+01,  4.6000000e+01,
            4.5000000e+01],
          [ 6.2000000e+01,  6.1000000e+01,  6.0000000e+01,  5.9000000e+01,
            4.6286172e-38,  5.7000000e+01,  5.6000000e+01,  5.5000000e+01,
            5.4000000e+01],
          [ 7.1000000e+01,  7.0000000e+01,  6.9000000e+01,  6.8000000e+01,
            1.9254146e-37,  6.6000000e+01,  6.5000000e+01,  6.4000000e+01,
            6.3000000e+01],
          [ 8.0000000e+01,  7.9000000e+01,  7.8000000e+01,  7.7000000e+01,
            1.8514722e-37,  7.5000000e+01,  7.4000000e+01,  7.3000000e+01,
            7.2000000e+01],
          [ 8.9000000e+01,  8.8000000e+01,  8.7000000e+01,  8.6000000e+01,
            1.0652919e-38,  8.4000000e+01,  8.3000000e+01,  8.2000000e+01,
            8.1000000e+01],
          [ 9.8000000e+01,  9.7000000e+01,  9.6000000e+01,  9.5000000e+01,
            2.3658196e-37,  9.3000000e+01,  9.2000000e+01,  9.1000000e+01,
            9.0000000e+01]])
   
   ```
   The example above does not always produce messed-up results for me, but I found that it seems more frequently messed-up when I Compose several sequential transformations, like this:
   ```
   >>> from mxnet.gluon.data.vision import transforms
   >>> transformer = transforms.Compose([
   ...         transforms.RandomFlipLeftRight(),
   ...         transforms.RandomFlipTopBottom()
   ...     ])
   >>> transformer(img)[:,:,0]
   array([[8.0000000e+00, 7.0000000e+00, 6.0000000e+00, 5.0000000e+00,
           6.3878950e-04, 3.0000000e+00, 2.0000000e+00, 1.0000000e+00,
           0.0000000e+00],
          [1.7000000e+01, 1.6000000e+01, 1.5000000e+01, 1.4000000e+01,
           4.7425812e+30, 1.2000000e+01, 1.1000000e+01, 1.0000000e+01,
           9.0000000e+00],
          [2.6000000e+01, 2.5000000e+01, 2.4000000e+01, 2.3000000e+01,
           1.7657325e+22, 2.1000000e+01, 2.0000000e+01, 1.9000000e+01,
           1.8000000e+01],
          [3.5000000e+01, 3.4000000e+01, 3.3000000e+01, 3.2000000e+01,
           7.5839171e+31, 3.0000000e+01, 2.9000000e+01, 2.8000000e+01,
           2.7000000e+01],
          [4.4000000e+01, 4.3000000e+01, 4.2000000e+01, 4.1000000e+01,
           3.3809470e+03, 3.9000000e+01, 3.8000000e+01, 3.7000000e+01,
           3.6000000e+01],
          [5.3000000e+01, 5.2000000e+01, 5.1000000e+01, 5.0000000e+01,
           2.2267046e-15, 4.8000000e+01, 4.7000000e+01, 4.6000000e+01,
           4.5000000e+01],
          [6.2000000e+01, 6.1000000e+01, 6.0000000e+01, 5.9000000e+01,
           7.5033516e+28, 5.7000000e+01, 5.6000000e+01, 5.5000000e+01,
           5.4000000e+01],
          [7.1000000e+01, 7.0000000e+01, 6.9000000e+01, 6.8000000e+01,
           4.7427375e+30, 6.6000000e+01, 6.5000000e+01, 6.4000000e+01,
           6.3000000e+01],
          [8.0000000e+01, 7.9000000e+01, 7.8000000e+01, 7.7000000e+01,
           1.4589531e-19, 7.5000000e+01, 7.4000000e+01, 7.3000000e+01,
           7.2000000e+01],
          [8.9000000e+01, 8.8000000e+01, 8.7000000e+01, 8.6000000e+01,
           4.7427375e+30, 8.4000000e+01, 8.3000000e+01, 8.2000000e+01,
           8.1000000e+01],
          [9.8000000e+01, 9.7000000e+01, 9.6000000e+01, 9.5000000e+01,
           1.9209545e+31, 9.3000000e+01, 9.2000000e+01, 9.1000000e+01,
           9.0000000e+01]])
   
   >>> transformer(img)[:,:,0]  # try again, and sometimes it works okay...
   array([[90., 91., 92., 93., 94., 95., 96., 97., 98.],
          [81., 82., 83., 84., 85., 86., 87., 88., 89.],
          [72., 73., 74., 75., 76., 77., 78., 79., 80.],
          [63., 64., 65., 66., 67., 68., 69., 70., 71.],
          [54., 55., 56., 57., 58., 59., 60., 61., 62.],
          [45., 46., 47., 48., 49., 50., 51., 52., 53.],
          [36., 37., 38., 39., 40., 41., 42., 43., 44.],
          [27., 28., 29., 30., 31., 32., 33., 34., 35.],
          [18., 19., 20., 21., 22., 23., 24., 25., 26.],
          [ 9., 10., 11., 12., 13., 14., 15., 16., 17.],
          [ 0.,  1.,  2.,  3.,  4.,  5.,  6.,  7.,  8.]])
   ```
   
   ## Environment
   
   ```
   ----------Python Info----------
   Version      : 3.7.6
   Compiler     : MSC v.1916 64 bit (AMD64)
   Build        : ('tags/v3.7.6:43364a7ae0', 'Dec 19 2019 00:42:30')
   Arch         : ('64bit', 'WindowsPE')
   ------------Pip Info-----------
   Version      : 20.2.1
   Directory    : D:\Projects\Combinati\dPCR-analysis\env-mxnet\lib\site-packages\pip
   ----------MXNet Info-----------
   Version      : 1.6.0
   Directory    : D:\Projects\Combinati\dPCR-analysis\env-mxnet\lib\site-packages\mxnet
   Num GPUs     : 0
   Hashtag not found. Not installed from pre-built package.
   ----------System Info----------
   Platform     : Windows-10-10.0.18362-SP0
   system       : Windows
   node         : roger-5577
   release      : 10
   version      : 10.0.18362
   ----------Hardware Info----------
   machine      : AMD64
   processor    : Intel64 Family 6 Model 158 Stepping 9, GenuineIntel
   Name                                       
   Intel(R) Core(TM) i7-7700HQ CPU @ 2.80GHz  
   ----------Network Test----------
   Setting timeout: 10
   Timing for MXNet: https://github.com/apache/incubator-mxnet, DNS: 0.0080 sec, LOAD: 1.1030 sec.
   Timing for GluonNLP GitHub: https://github.com/dmlc/gluon-nlp, DNS: 0.0010 sec, LOAD: 0.5180 sec.
   Timing for GluonNLP: http://gluon-nlp.mxnet.io, DNS: 0.0861 sec, LOAD: 0.3459 sec.
   Timing for D2L: http://d2l.ai, DNS: 0.0520 sec, LOAD: 0.2090 sec.
   Timing for D2L (zh-cn): http://zh.d2l.ai, DNS: 0.0190 sec, LOAD: 0.2664 sec.
   Timing for FashionMNIST: https://repo.mxnet.io/gluon/dataset/fashion-mnist/train-labels-idx1-ubyte.gz, DNS: 0.0870 sec, LOAD: 0.4820 sec.
   Timing for PYPI: https://pypi.python.org/pypi/pip, DNS: 0.0100 sec, LOAD: 0.5760 sec.
   Error open Conda: https://repo.continuum.io/pkgs/free/, HTTP Error 403: Forbidden, DNS finished in 0.006048440933227539 sec.
   ```
   


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[GitHub] [incubator-mxnet] szha closed issue #18911: Image transforms sometimes produce incorrect result

Posted by GitBox <gi...@apache.org>.
szha closed issue #18911:
URL: https://github.com/apache/incubator-mxnet/issues/18911


   


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[GitHub] [incubator-mxnet] zhreshold commented on issue #18911: Image transforms sometimes produce incorrect result

Posted by GitBox <gi...@apache.org>.
zhreshold commented on issue #18911:
URL: https://github.com/apache/incubator-mxnet/issues/18911#issuecomment-673155336


   confirmed, will update once I rooted the cause


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[GitHub] [incubator-mxnet] github-actions[bot] commented on issue #18911: Image transforms sometimes produce incorrect result

Posted by GitBox <gi...@apache.org>.
github-actions[bot] commented on issue #18911:
URL: https://github.com/apache/incubator-mxnet/issues/18911#issuecomment-672572398


   Welcome to Apache MXNet (incubating)! We are on a mission to democratize AI, and we are glad that you are contributing to it by opening this issue.
   Please make sure to include all the relevant context, and one of the @apache/mxnet-committers will be here shortly.
   If you are interested in contributing to our project, let us know! Also, be sure to check out our guide on [contributing to MXNet](https://mxnet.apache.org/community/contribute) and our [development guides wiki](https://cwiki.apache.org/confluence/display/MXNET/Developments).


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[GitHub] [incubator-mxnet] szha commented on issue #18911: Image transforms sometimes produce incorrect result

Posted by GitBox <gi...@apache.org>.
szha commented on issue #18911:
URL: https://github.com/apache/incubator-mxnet/issues/18911#issuecomment-672661747


   Thanks for reporting this. @zhreshold mind taking a look?


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