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Pyramid Vision Transformer V2 (PVTv2)

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Pyramid Vision Transformer V2 (PVTv2)

Overview

The PVTv2 model was proposed in PVT v2: Improved Baselines with Pyramid Vision Transformer by Wenhai Wang, Enze Xie, Xiang Li, Deng-Ping Fan, Kaitao Song, Ding Liang, Tong Lu, Ping Luo, and Ling Shao. As an improved variant of PVT, it eschews position embeddings, relying instead on positional information encoded through zero-padding and overlapping patch embeddings. This lack of reliance on position embeddings simplifies the architecture, and enables running inference at any resolution without needing to interpolate them.

The PVTv2 encoder structure has been successfully deployed to achieve state-of-the-art scores in Segformer for semantic segmentation, GLPN for monocular depth, and Panoptic Segformer for panoptic segmentation.

PVTv2 belongs to a family of models called hierarchical transformers , which make adaptations to transformer layers in order to generate multi-scale feature maps. Unlike the columnal structure of Vision Transformer (ViT) which loses fine-grained detail, multi-scale feature maps are known preserve this detail and aid performance in dense prediction tasks. In the case of PVTv2, this is achieved by generating image patch tokens using 2D convolution with overlapping kernels in each encoder layer.

The multi-scale features of hierarchical transformers allow them to be easily swapped in for traditional workhorse computer vision backbone models like ResNet in larger architectures. Both Segformer and Panoptic Segformer demonstrated that configurations using PVTv2 for a backbone consistently outperformed those with similarly sized ResNet backbones.

Another powerful feature of the PVTv2 is the complexity reduction in the self-attention layers called Spatial Reduction Attention (SRA), which uses 2D convolution layers to project hidden states to a smaller resolution before attending to them with the queries, improving the $O(n^2)$ complexity of self-attention to $O(n^2/R)$, with $R$ being the spatial reduction ratio (sr_ratio, aka kernel size and stride in the 2D convolution).

SRA was introduced in PVT, and is the default attention complexity reduction method used in PVTv2. However, PVTv2 also introduced the option of using a self-attention mechanism with linear complexity related to image size, which they called β€œLinear SRA”. This method uses average pooling to reduce the hidden states to a fixed size that is invariant to their original resolution (although this is inherently more lossy than regular SRA). This option can be enabled by setting linear_attention to True in the PVTv2Config.

Abstract from the paper:

Transformer recently has presented encouraging progress in computer vision. In this work, we present new baselines by improving the original Pyramid Vision Transformer (PVT v1) by adding three designs, including (1) linear complexity attention layer, (2) overlapping patch embedding, and (3) convolutional feed-forward network. With these modifications, PVT v2 reduces the computational complexity of PVT v1 to linear and achieves significant improvements on fundamental vision tasks such as classification, detection, and segmentation. Notably, the proposed PVT v2 achieves comparable or better performances than recent works such as Swin Transformer. We hope this work will facilitate state-of-the-art Transformer researches in computer vision. Code is available at https://github.com/whai362/PVT.

This model was contributed by FoamoftheSea. The original code can be found here.

Usage tips

  • PVTv2 is a hierarchical transformer model which has demonstrated powerful performance in image classification and multiple other tasks, used as a backbone for semantic segmentation in Segformer, monocular depth estimation in GLPN, and panoptic segmentation in Panoptic Segformer, consistently showing higher performance than similar ResNet configurations.

  • Hierarchical transformers like PVTv2 achieve superior data and parameter efficiency on image data compared with pure transformer architectures by incorporating design elements of convolutional neural networks (CNNs) into their encoders. This creates a best-of-both-worlds architecture that infuses the useful inductive biases of CNNs like translation equivariance and locality into the network while still enjoying the benefits of dynamic data response and global relationship modeling provided by the self-attention mechanism of transformers.

  • PVTv2 uses overlapping patch embeddings to create multi-scale feature maps, which are infused with location information using zero-padding and depth-wise convolutions.

  • To reduce the complexity in the attention layers, PVTv2 performs a spatial reduction on the hidden states using either strided 2D convolution (SRA) or fixed-size average pooling (Linear SRA). Although inherently more lossy, Linear SRA provides impressive performance with a linear complexity with respect to image size. To use Linear SRA in the self-attention layers, set linear_attention=True in the PvtV2Config.

  • PvtV2Model is the hierarchical transformer encoder (which is also often referred to as Mix Transformer or MiT in the literature). PvtV2ForImageClassification adds a simple classifier head on top to perform Image Classification. PvtV2Backbone can be used with the AutoBackbone system in larger architectures like Deformable DETR.

  • ImageNet pretrained weights for all model sizes can be found on the hub.

    The best way to get started with the PVTv2 is to load the pretrained checkpoint with the size of your choosing using AutoModelForImageClassification:

import requests
import torch

from transformers import AutoModelForImageClassification, AutoImageProcessor
from PIL import Image

model = AutoModelForImageClassification.from_pretrained("OpenGVLab/pvt_v2_b0")
image_processor = AutoImageProcessor.from_pretrained("OpenGVLab/pvt_v2_b0")
url = "http://images.cocodataset.org/val2017/000000039769.jpg"
image = Image.open(requests.get(url, stream=True).raw)
processed = image_processor(image)
outputs = model(torch.tensor(processed["pixel_values"]))

To use the PVTv2 as a backbone for more complex architectures like DeformableDETR, you can use AutoBackbone (this model would need fine-tuning as you’re replacing the backbone in the pretrained model):

import requests
import torch

from transformers import AutoConfig, AutoModelForObjectDetection, AutoImageProcessor
from PIL import Image

model = AutoModelForObjectDetection.from_config(
    config=AutoConfig.from_pretrained(
        "SenseTime/deformable-detr",
        backbone_config=AutoConfig.from_pretrained("OpenGVLab/pvt_v2_b5"),
        use_timm_backbone=False
    ),
)

image_processor = AutoImageProcessor.from_pretrained("SenseTime/deformable-detr")
url = "http://images.cocodataset.org/val2017/000000039769.jpg"
image = Image.open(requests.get(url, stream=True).raw)
processed = image_processor(image)
outputs = model(torch.tensor(processed["pixel_values"]))

PVTv2 performance on ImageNet-1K by model size (B0-B5):

Method Size Acc@1 #Params (M)
PVT-V2-B0 224 70.5 3.7
PVT-V2-B1 224 78.7 14.0
PVT-V2-B2-Linear 224 82.1 22.6
PVT-V2-B2 224 82.0 25.4
PVT-V2-B3 224 83.1 45.2
PVT-V2-B4 224 83.6 62.6
PVT-V2-B5 224 83.8 82.0

PvtV2Config

class transformers.PvtV2Config

< >

( image_size: typing.Union[int, typing.Tuple[int, int]] = 224 num_channels: int = 3 num_encoder_blocks: int = 4 depths: typing.List[int] = [2, 2, 2, 2] sr_ratios: typing.List[int] = [8, 4, 2, 1] hidden_sizes: typing.List[int] = [32, 64, 160, 256] patch_sizes: typing.List[int] = [7, 3, 3, 3] strides: typing.List[int] = [4, 2, 2, 2] num_attention_heads: typing.List[int] = [1, 2, 5, 8] mlp_ratios: typing.List[int] = [8, 8, 4, 4] hidden_act: typing.Union[str, typing.Callable] = 'gelu' hidden_dropout_prob: float = 0.0 attention_probs_dropout_prob: float = 0.0 initializer_range: float = 0.02 drop_path_rate: float = 0.0 layer_norm_eps: float = 1e-06 qkv_bias: bool = True linear_attention: bool = False out_features = None out_indices = None **kwargs )

Parameters

  • image_size (Union[int, Tuple[int, int]], optional, defaults to 224) — The input image size. Pass int value for square image, or tuple of (height, width).
  • num_channels (int, optional, defaults to 3) — The number of input channels.
  • num_encoder_blocks ([int], optional, defaults to 4) — The number of encoder blocks (i.e. stages in the Mix Transformer encoder).
  • depths (List[int], optional, defaults to [2, 2, 2, 2]) — The number of layers in each encoder block.
  • sr_ratios (List[int], optional, defaults to [8, 4, 2, 1]) — Spatial reduction ratios in each encoder block.
  • hidden_sizes (List[int], optional, defaults to [32, 64, 160, 256]) — Dimension of each of the encoder blocks.
  • patch_sizes (List[int], optional, defaults to [7, 3, 3, 3]) — Patch size for overlapping patch embedding before each encoder block.
  • strides (List[int], optional, defaults to [4, 2, 2, 2]) — Stride for overlapping patch embedding before each encoder block.
  • num_attention_heads (List[int], optional, defaults to [1, 2, 5, 8]) — Number of attention heads for each attention layer in each block of the Transformer encoder.
  • mlp_ratios (List[int], optional, defaults to [8, 8, 4, 4]) — Ratio of the size of the hidden layer compared to the size of the input layer of the Mix FFNs in the encoder blocks.
  • hidden_act (str or Callable, optional, defaults to "gelu") — The non-linear activation function (function or string) in the encoder and pooler. If string, "gelu", "relu", "selu" and "gelu_new" are supported.
  • hidden_dropout_prob (float, optional, defaults to 0.0) — The dropout probability for all fully connected layers in the embeddings, encoder, and pooler.
  • attention_probs_dropout_prob (float, optional, defaults to 0.0) — The dropout ratio for the attention probabilities.
  • initializer_range (float, optional, defaults to 0.02) — The standard deviation of the truncated_normal_initializer for initializing all weight matrices.
  • drop_path_rate (float, optional, defaults to 0.0) — The dropout probability for stochastic depth, used in the blocks of the Transformer encoder.
  • layer_norm_eps (float, optional, defaults to 1e-06) — The epsilon used by the layer normalization layers.
  • qkv_bias (bool, optional, defaults to True) — Whether or not a learnable bias should be added to the queries, keys and values.
  • linear_attention (bool, optional, defaults to False) — Use linear attention complexity. If set to True, sr_ratio is ignored and average pooling is used for dimensionality reduction in the attention layers rather than strided convolution.
  • out_features (List[str], optional) — If used as backbone, list of features to output. Can be any of "stem", "stage1", "stage2", etc. (depending on how many stages the model has). If unset and out_indices is set, will default to the corresponding stages. If unset and out_indices is unset, will default to the last stage.
  • out_indices (List[int], optional) — If used as backbone, list of indices of features to output. Can be any of 0, 1, 2, etc. (depending on how many stages the model has). If unset and out_features is set, will default to the corresponding stages. If unset and out_features is unset, will default to the last stage.

This is the configuration class to store the configuration of a PvtV2Model. It is used to instantiate a Pvt V2 model according to the specified arguments, defining the model architecture. Instantiating a configuration with the defaults will yield a similar configuration to that of the Pvt V2 B0 OpenGVLab/pvt_v2_b0 architecture.

Configuration objects inherit from PretrainedConfig and can be used to control the model outputs. Read the documentation from PretrainedConfig for more information.

Example:

>>> from transformers import PvtV2Model, PvtV2Config

>>> # Initializing a pvt_v2_b0 style configuration
>>> configuration = PvtV2Config()

>>> # Initializing a model from the OpenGVLab/pvt_v2_b0 style configuration
>>> model = PvtV2Model(configuration)

>>> # Accessing the model configuration
>>> configuration = model.config

PvtForImageClassification

class transformers.PvtV2ForImageClassification

< >

( config: PvtV2Config )

Parameters

  • config (~PvtV2Config) — Model configuration class with all the parameters of the model. Initializing with a config file does not load the weights associated with the model, only the configuration. Check out the from_pretrained() method to load the model weights.

Pvt-v2 Model transformer with an image classification head on top (a linear layer on top of the final hidden state of the [CLS] token) e.g. for ImageNet.

This model is a PyTorch torch.nn.Module sub-class. Use it as a regular PyTorch Module and refer to the PyTorch documentation for all matter related to general usage and behavior.

forward

< >

( pixel_values: typing.Optional[torch.Tensor] labels: typing.Optional[torch.Tensor] = None output_attentions: typing.Optional[bool] = None output_hidden_states: typing.Optional[bool] = None return_dict: typing.Optional[bool] = None ) β†’ transformers.modeling_outputs.ImageClassifierOutput or tuple(torch.FloatTensor)

Parameters

  • pixel_values (torch.FloatTensor of shape (batch_size, num_channels, height, width)) — Pixel values. Pixel values can be obtained using AutoImageProcessor. See PvtImageProcessor.call() for details.
  • output_attentions (bool, optional) — Whether or not to return the attentions tensors of all attention layers. See attentions under returned tensors for more detail.
  • output_hidden_states (bool, optional) — Whether or not to return the hidden states of all layers. See hidden_states under returned tensors for more detail.
  • return_dict (bool, optional) — Whether or not to return a ModelOutput instead of a plain tuple.
  • labels (torch.LongTensor of shape (batch_size,), optional) — Labels for computing the image classification/regression loss. Indices should be in [0, ..., config.num_labels - 1]. If config.num_labels == 1 a regression loss is computed (Mean-Square loss), If config.num_labels > 1 a classification loss is computed (Cross-Entropy).

Returns

transformers.modeling_outputs.ImageClassifierOutput or tuple(torch.FloatTensor)

A transformers.modeling_outputs.ImageClassifierOutput or a tuple of torch.FloatTensor (if return_dict=False is passed or when config.return_dict=False) comprising various elements depending on the configuration (PvtV2Config) and inputs.

  • loss (torch.FloatTensor of shape (1,), optional, returned when labels is provided) β€” Classification (or regression if config.num_labels==1) loss.

  • logits (torch.FloatTensor of shape (batch_size, config.num_labels)) β€” Classification (or regression if config.num_labels==1) scores (before SoftMax).

  • hidden_states (tuple(torch.FloatTensor), optional, returned when output_hidden_states=True is passed or when config.output_hidden_states=True) β€” Tuple of torch.FloatTensor (one for the output of the embeddings, if the model has an embedding layer, + one for the output of each stage) of shape (batch_size, sequence_length, hidden_size). Hidden-states (also called feature maps) of the model at the output of each stage.

  • attentions (tuple(torch.FloatTensor), optional, returned when output_attentions=True is passed or when config.output_attentions=True) β€” Tuple of torch.FloatTensor (one for each layer) of shape (batch_size, num_heads, patch_size, sequence_length).

    Attentions weights after the attention softmax, used to compute the weighted average in the self-attention heads.

The PvtV2ForImageClassification forward method, overrides the __call__ special method.

Although the recipe for forward pass needs to be defined within this function, one should call the Module instance afterwards instead of this since the former takes care of running the pre and post processing steps while the latter silently ignores them.

Example:

>>> from transformers import AutoImageProcessor, PvtV2ForImageClassification
>>> import torch
>>> from datasets import load_dataset

>>> dataset = load_dataset("huggingface/cats-image", trust_remote_code=True)
>>> image = dataset["test"]["image"][0]

>>> image_processor = AutoImageProcessor.from_pretrained("OpenGVLab/pvt_v2_b0")
>>> model = PvtV2ForImageClassification.from_pretrained("OpenGVLab/pvt_v2_b0")

>>> inputs = image_processor(image, return_tensors="pt")

>>> with torch.no_grad():
...     logits = model(**inputs).logits

>>> # model predicts one of the 1000 ImageNet classes
>>> predicted_label = logits.argmax(-1).item()
>>> print(model.config.id2label[predicted_label])
LABEL_281

PvtModel

class transformers.PvtV2Model

< >

( config: PvtV2Config )

Parameters

  • config (~PvtV2Config) — Model configuration class with all the parameters of the model. Initializing with a config file does not load the weights associated with the model, only the configuration. Check out the from_pretrained() method to load the model weights.

The bare Pvt-v2 encoder outputting raw hidden-states without any specific head on top. This model is a PyTorch torch.nn.Module sub-class. Use it as a regular PyTorch Module and refer to the PyTorch documentation for all matter related to general usage and behavior.

forward

< >

( pixel_values: FloatTensor output_attentions: typing.Optional[bool] = None output_hidden_states: typing.Optional[bool] = None return_dict: typing.Optional[bool] = None ) β†’ transformers.modeling_outputs.BaseModelOutput or tuple(torch.FloatTensor)

Parameters

  • pixel_values (torch.FloatTensor of shape (batch_size, num_channels, height, width)) — Pixel values. Pixel values can be obtained using AutoImageProcessor. See PvtImageProcessor.call() for details.
  • output_attentions (bool, optional) — Whether or not to return the attentions tensors of all attention layers. See attentions under returned tensors for more detail.
  • output_hidden_states (bool, optional) — Whether or not to return the hidden states of all layers. See hidden_states under returned tensors for more detail.
  • return_dict (bool, optional) — Whether or not to return a ModelOutput instead of a plain tuple.

Returns

transformers.modeling_outputs.BaseModelOutput or tuple(torch.FloatTensor)

A transformers.modeling_outputs.BaseModelOutput or a tuple of torch.FloatTensor (if return_dict=False is passed or when config.return_dict=False) comprising various elements depending on the configuration (PvtV2Config) and inputs.

  • last_hidden_state (torch.FloatTensor of shape (batch_size, sequence_length, hidden_size)) β€” Sequence of hidden-states at the output of the last layer of the model.

  • hidden_states (tuple(torch.FloatTensor), optional, returned when output_hidden_states=True is passed or when config.output_hidden_states=True) β€” Tuple of torch.FloatTensor (one for the output of the embeddings, if the model has an embedding layer, + one for the output of each layer) of shape (batch_size, sequence_length, hidden_size).

    Hidden-states of the model at the output of each layer plus the optional initial embedding outputs.

  • attentions (tuple(torch.FloatTensor), optional, returned when output_attentions=True is passed or when config.output_attentions=True) β€” Tuple of torch.FloatTensor (one for each layer) of shape (batch_size, num_heads, sequence_length, sequence_length).

    Attentions weights after the attention softmax, used to compute the weighted average in the self-attention heads.

The PvtV2Model forward method, overrides the __call__ special method.

Although the recipe for forward pass needs to be defined within this function, one should call the Module instance afterwards instead of this since the former takes care of running the pre and post processing steps while the latter silently ignores them.

Example:

>>> from transformers import AutoImageProcessor, PvtV2Model
>>> import torch
>>> from datasets import load_dataset

>>> dataset = load_dataset("huggingface/cats-image", trust_remote_code=True)
>>> image = dataset["test"]["image"][0]

>>> image_processor = AutoImageProcessor.from_pretrained("OpenGVLab/pvt_v2_b0")
>>> model = PvtV2Model.from_pretrained("OpenGVLab/pvt_v2_b0")

>>> inputs = image_processor(image, return_tensors="pt")

>>> with torch.no_grad():
...     outputs = model(**inputs)

>>> last_hidden_states = outputs.last_hidden_state
>>> list(last_hidden_states.shape)
[1, 256, 7, 7]
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