Commit 809f5683 authored by Davis King's avatar Davis King

updated docs

parent 14acae38
...@@ -431,6 +431,12 @@ cross_validate_trainer_threaded(trainer, ...@@ -431,6 +431,12 @@ cross_validate_trainer_threaded(trainer,
be detected by a single HOG detector. You will still need to manually review and clean the dataset after applying --cluster, but it makes be detected by a single HOG detector. You will still need to manually review and clean the dataset after applying --cluster, but it makes
the process of splitting a dataset into coherent poses, from the point of view of HOG, a lot easier. the process of splitting a dataset into coherent poses, from the point of view of HOG, a lot easier.
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<p>
A related issue arises because HOG is a rigid template, which is that the boxes in your training data need to all have essentially the same
aspect ratio. For instance, a single HOG filter can't possibly detect objects that are both 100x50 pixels and 50x100 pixels. To do this you
would need to split your dataset into two parts, objects with a 2:1 aspect ratio and objects with a 1:2 aspect ratio and then train two separate
HOG detectors, one for each aspect ratio.
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<p> <p>
However, it should be emphasized that even using multiple HOG detectors will only get you so far. So at some point you should consider However, it should be emphasized that even using multiple HOG detectors will only get you so far. So at some point you should consider
using a <a href="ml.html#loss_mmod_">CNN based detection method</a> since CNNs can generally deal with arbitrary using a <a href="ml.html#loss_mmod_">CNN based detection method</a> since CNNs can generally deal with arbitrary
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