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@@ -176,7 +176,7 @@ varying group size $n_p = \{3,5,10,25\}$.
\fref{fig:offline} shows the precision-recall plot as the threshold varies.
-Both algrithms perform three times better than the majority class baseline of
+Both algorithms perform three times better than the majority class baseline of
15\% with a recall of 100\% on all people. We make two main observations.
First, as expected, SHT performs better than MoG because of temporal smoothing.
Second, performance is inversely proportional to group size. As we test
@@ -364,7 +364,7 @@ given the relatively low resolution of the Kinect's infrared camera.
\fref{fig:var} compares the precision-recall curve of \fref{fig:offline:sht} to
the curve of the same experiment run on the newly obtained dataset. We observe
-a roughly 20\% increase in performace across most thresholds. We
+a roughly 20\% increase in performance across most thresholds. We
believe these results would significantly outperform face recognition
in a similar setting.