Keras 3 API documentation / KerasHub / Pretrained Models / DenseNet / DenseNetImageConverter

DenseNetImageConverter

[source]

DenseNetImageConverter class

keras_hub.layers.DenseNetImageConverter(
    image_size=None,
    scale=None,
    offset=None,
    crop_to_aspect_ratio=True,
    interpolation="bilinear",
    data_format=None,
    **kwargs
)

Preprocess raw images into model ready inputs.

This class converts from raw images to model ready inputs. This conversion proceeds in the following steps:

  1. Resize the image using to image_size. If image_size is None, this step will be skipped.
  2. Rescale the image by multiplying by scale, which can be either global or per channel. If scale is None, this step will be skipped.
  3. Offset the image by adding offset, which can be either global or per channel. If offset is None, this step will be skipped.

The layer will take as input a raw image tensor in the channels last or channels first format, and output a preprocessed image input for modeling. This tensor can be batched (rank 4), or unbatched (rank 3).

This layer can be used with the from_preset() constructor to load a layer that will rescale and resize an image for a specific pretrained model. Using the layer this way allows writing preprocessing code that does not need updating when switching between model checkpoints.

Arguments

  • image_size: (int, int) tuple or None. The output size of the image, not including the channels axis. If None, the input will not be resized.
  • scale: float, tuple of floats, or None. The scale to apply to the inputs. If scale is a single float, the entire input will be multiplied by scale. If scale is a tuple, it's assumed to contain per-channel scale value multiplied against each channel of the input images. If scale is None, no scaling is applied.
  • offset: float, tuple of floats, or None. The offset to apply to the inputs. If offset is a single float, the entire input will be summed with offset. If offset is a tuple, it's assumed to contain per-channel offset value summed against each channel of the input images. If offset is None, no scaling is applied.
  • crop_to_aspect_ratio: If True, resize the images without aspect ratio distortion. When the original aspect ratio differs from the target aspect ratio, the output image will be cropped so as to return the largest possible window in the image (of size (height, width)) that matches the target aspect ratio. By default (crop_to_aspect_ratio=False), aspect ratio may not be preserved.
  • interpolation: String, the interpolation method. Supports "bilinear", "nearest", "bicubic", "lanczos3", "lanczos5". Defaults to "bilinear".
  • data_format: String, either "channels_last" or "channels_first". The ordering of the dimensions in the inputs. "channels_last" corresponds to inputs with shape (batch, height, width, channels) while "channels_first" corresponds to inputs with shape (batch, channels, height, width). It defaults to the image_data_format value found in your Keras config file at ~/.keras/keras.json. If you never set it, then it will be "channels_last".

Examples

# Resize raw images and scale them to [0, 1].
converter = keras_hub.layers.ImageConverter(
    image_size=(128, 128),
    scale=1. / 255,
)
converter(np.random.randint(0, 256, size=(2, 512, 512, 3)))

# Resize images to the specific size needed for a PaliGemma preset.
converter = keras_hub.layers.ImageConverter.from_preset(
    "pali_gemma_3b_224"
)
converter(np.random.randint(0, 256, size=(2, 512, 512, 3)))

[source]

from_preset method

DenseNetImageConverter.from_preset(preset, **kwargs)

Instantiate a keras_hub.layers.ImageConverter from a model preset.

A preset is a directory of configs, weights and other file assets used to save and load a pre-trained model. The preset can be passed as one of:

  1. a built-in preset identifier like 'pali_gemma_3b_224'
  2. a Kaggle Models handle like 'kaggle://user/paligemma/keras/pali_gemma_3b_224'
  3. a Hugging Face handle like 'hf://user/pali_gemma_3b_224'
  4. a path to a local preset directory like './pali_gemma_3b_224'

You can run cls.presets.keys() to list all built-in presets available on the class.

Arguments

  • preset: string. A built-in preset identifier, a Kaggle Models handle, a Hugging Face handle, or a path to a local directory.
  • load_weights: bool. If True, the weights will be loaded into the model architecture. If False, the weights will be randomly initialized.

Examples

batch = np.random.randint(0, 256, size=(2, 512, 512, 3))

# Resize images for `"pali_gemma_3b_224"`.
converter = keras_hub.layers.ImageConverter.from_preset(
    "pali_gemma_3b_224"
)
converter(batch) # # Output shape (2, 224, 224, 3)

# Resize images for `"pali_gemma_3b_448"` without cropping.
converter = keras_hub.layers.ImageConverter.from_preset(
    "pali_gemma_3b_448",
    crop_to_aspect_ratio=False,
)
converter(batch) # # Output shape (2, 448, 448, 3)
Preset name Parameters Description
densenet_121_imagenet 7.04M 121-layer DenseNet model pre-trained on the ImageNet 1k dataset at a 224x224 resolution.
densenet_169_imagenet 12.64M 169-layer DenseNet model pre-trained on the ImageNet 1k dataset at a 224x224 resolution.
densenet_201_imagenet 18.32M 201-layer DenseNet model pre-trained on the ImageNet 1k dataset at a 224x224 resolution.