# Single class pedestrian detector for SOD RealNets. # # This file can serve as template for your future RealNets models to be generated by the SOD training # interfaces which are documented at https://sod.pixlab.io/api.html#realnet_train. # # Copyright (C) PixLab| Symisc Systems - All right reserved. legal@symisc.net - https://sod.pixlab.io # The first thing to specify is where the training samples are located. # You must group your dataset on the same directory so can SOD load each entry # on a single run and pass the collected image set to the RealNet trainer. [paths] # Mandatory positive samples path (i.e. the pedestrian dataset that may contains hundred or thousand of images) pos = /var/pedestrian_dataset/positives # Background samples path (i.e. various negative samples holding anything [car, trees, bus, cat, etc] except a pedestrian!! very important) neg = /var/pedestrian_dataset/background # Optional test sample path #test = /var/pedestrian_dataset/test # True to recurse (scan) subdirectories on the root path of your dataset (positives, background and test paths) recurse = true # Everything below is an optional field and does not require that you mess with it unless # you know what you doing (i.e. Tune your model) [detector] # min_tree_depth = 6 # Minimum tree depth # max_tree_depth = 12 # Maximum tree depth # max_trees = 2048 # Maximum decision tress to generate for this model # tpr = 0.9975 # Minimum True Positive Rate (TPR) which must be a float value set between 0.1 .. 1 # fpr = 0.5 # Maximum False Positive Rate (FPR) which must be a float value set between 0.1 .. 1 # data_augment = false # Introduce small perturbation to the input positive samples # target_fpr = 1e-6 # Target false positive rate (FPR) to achieve. # When we hit this value or max_trees whichever occurs first, training is stopped. # normalize = false # Normalize the training positive samples # Information about your model name = pedestrian about = RealNets pedestrian detector (single class) - Copyright (C) 2017 - 2018 Symisc Systems