diff --git a/docs/source/tutorial.rst b/docs/source/tutorial.rst index 369d71ec..c1817b93 100644 --- a/docs/source/tutorial.rst +++ b/docs/source/tutorial.rst @@ -49,7 +49,7 @@ and multispectral data at the same time is not currently supported. Stick to one data type per model (or stack the RGB bands with the multispectral bands and treat as in the case of multispectral data). -Preparing data (RGB and multispectral) +Preparing data (RGB/multispectral) -------------------------------------- An example of the recommended file structure when training a new model is as follows: @@ -271,7 +271,7 @@ multispectral (``.tif``) tiles. display(Image.fromarray(image)) -Training a model (RGB) +Training (RGB) ---------------------- Before training can commence, it is necessary to register the training data. It is possible to set a validation fold for @@ -357,7 +357,7 @@ Training outputs, including model weights and training metrics, will be stored i Early stopping is implemented and will be triggered by a sustained failure to improve on the performance of predictions on the validation fold. This is measured as the AP50 score of the validation predictions. -Training a model (multispectral) +Training (multispectral) -------------------------------- The process for training a multispectral model is similar to that for RGB data but there are some key steps that are @@ -547,7 +547,7 @@ model is to be used on a range of different resolutions, random resizing can hel different scales. -Post-training (check training convergence) +Post-training (check convergence) ------------------------------------------ It is important to check that the model has converged and is not overfitting. This can be done by plotting the training diff --git a/docs/source/tutorial_multi.rst b/docs/source/tutorial_multi.rst index 125e06ef..91548842 100644 --- a/docs/source/tutorial_multi.rst +++ b/docs/source/tutorial_multi.rst @@ -17,8 +17,8 @@ The key steps are: 4. Making landscape level predictions -Preparing data (RGB and multispectral) --------------------------------------- +Preparing data +-------------- Data can be prepared in a similar way to the single class case but the classes and their order (mapping) need to be saved so that they can be accessed