AOI_seq |
Sequence analysis of area of interest entries |
AOI_time |
Analysis of time spent in areas of interest |
AOI_time_binned |
Binned time analysis of area of interest entries |
combine_eyes |
Combine binocular data into single X/Y coordinate pairs |
compare_algorithms |
A battery of metrics and plots to compare the two algorithms (dispersion and VTI) |
conditional_transform |
conditional_transform |
create_AOI_df |
Create a blank data frame for populating with AOIs |
dist_to_visual_angle |
Compute visual angle from distance metrics |
fixation_dispersion |
Fixation detection using a dispersion method |
fixation_VTI |
Fixation detection using a velocity threshold identification method |
HCL |
Example dataset from that contains binocular eye data from two participants from a simple contingency learning task (the data are from Beesley, Nguyen, Pearson, & Le Pelley, 2015). In this task there are two stimuli that appear simultaneously on each trial (to the left and right of the screen). Participants look at these cues and then make a decision by selecting an "outcome response" button. |
HCL_AOIs |
Example AOIs for use with HCL |
HCL_behavioural |
Example dataset of behavioural data to complement dataset HCL. |
hdf5_get_event |
Get messgaes stored in TOBII-generated HDF5 files |
hdf5_to_df |
Convert TOBII-generated HDF5 files to dataframe |
interpolate |
Interpolation of missing data (NAs) |
plot_AOI_growth |
Plots absolute or proportional time spent in AOIs over time |
plot_heatmap |
Plot heatmap of raw data |
plot_seq |
Plot of raw data over time |
plot_spatial |
Plot raw data and fixations |
saccade_VTI |
Velocity threshold identification of saccades |
smoother |
Smoothing of raw data |