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authorThibaut Horel <thibaut.horel@gmail.com>2012-02-29 12:12:48 -0800
committerThibaut Horel <thibaut.horel@gmail.com>2012-02-29 14:31:56 -0800
commitfff7a0b8c20a3de752cc038e6ae2b784a2f46712 (patch)
treed2cc56573bc5a17c69c234dfe834a463d45b22ee
parent79ce4cc4bff42b05d634f20a661197980031a03c (diff)
downloadkinect-fff7a0b8c20a3de752cc038e6ae2b784a2f46712.tar.gz
Minor improvements in the uniqueness section
-rw-r--r--uniqueness.tex8
1 files changed, 4 insertions, 4 deletions
diff --git a/uniqueness.tex b/uniqueness.tex
index dae88c3..c96cf51 100644
--- a/uniqueness.tex
+++ b/uniqueness.tex
@@ -93,7 +93,7 @@ pairs with a false positive rate of 6\%.
This experiment gives an idea of the noise variance level above which
it is not possible to consistently distinguish skeletons. This noise
level can be interpreted as follows in the person recognition
-setting. For this problem, a classifier can be built by first learning
+problem. For this problem, a classifier can be built be first learning
a \emph{skeleton profile} for each individual from all the
measurements in the training set. Then, given a new skeleton
measurement, the algorithm classifies it to the individual whose
@@ -105,9 +105,9 @@ there are two distinct sources of noise:
\item the noise of the new measurement: this comes from the device
doing the measurement.
\end{itemize}
-
-We will come back in section \label{sec:kinect} on the structure of
-the noise and its relation to the noise represented on the ROC curves.
+the combination of these two noises is what can be compared to the
+noise represented on the ROC curves. Section \label{sec:kinect} will
+give more insight on the structure of the noise.
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