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Semantic segmentation using LoRA

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Semantic segmentation using LoRA

This guide demonstrates how to use LoRA, a low-rank approximation technique, to finetune a SegFormer model variant for semantic segmentation. By using LoRA from 🤗 PEFT, we can reduce the number of trainable parameters in the SegFormer model to only 14% of the original trainable parameters.

LoRA achieves this reduction by adding low-rank “update matrices” to specific blocks of the model, such as the attention blocks. During fine-tuning, only these matrices are trained, while the original model parameters are left unchanged. At inference time, the update matrices are merged with the original model parameters to produce the final classification result.

For more information on LoRA, please refer to the original LoRA paper.

Install dependencies

Install the libraries required for model training:

!pip install transformers accelerate evaluate datasets peft -q

Authenticate to share your model

To share the finetuned model with the community at the end of the training, authenticate using your 🤗 token. You can obtain your token from your account settings.

from huggingface_hub import notebook_login

notebook_login()

Load a dataset

To ensure that this example runs within a reasonable time frame, here we are limiting the number of instances from the training set of the SceneParse150 dataset to 150.

from datasets import load_dataset

ds = load_dataset("scene_parse_150", split="train[:150]")

Next, split the dataset into train and test sets.

ds = ds.train_test_split(test_size=0.1)
train_ds = ds["train"]
test_ds = ds["test"]

Prepare label maps

Create a dictionary that maps a label id to a label class, which will be useful when setting up the model later:

  • label2id: maps the semantic classes of the dataset to integer ids.
  • id2label: maps integer ids back to the semantic classes.
import json
from huggingface_hub import cached_download, hf_hub_url

repo_id = "huggingface/label-files"
filename = "ade20k-id2label.json"
id2label = json.load(open(cached_download(hf_hub_url(repo_id, filename, repo_type="dataset")), "r"))
id2label = {int(k): v for k, v in id2label.items()}
label2id = {v: k for k, v in id2label.items()}
num_labels = len(id2label)

Prepare datasets for training and evaluation

Next, load the SegFormer image processor to prepare the images and annotations for the model. This dataset uses the zero-index as the background class, so make sure to set do_reduce_labels=True to subtract one from all labels since the background class is not among the 150 classes.

from transformers import AutoImageProcessor

checkpoint = "nvidia/mit-b0"
image_processor = AutoImageProcessor.from_pretrained(checkpoint, do_reduce_labels=True)

Add a function to apply data augmentation to the images, so that the model is more robust against overfitting. Here we use the ColorJitter function from torchvision to randomly change the color properties of an image.

from torchvision.transforms import ColorJitter

jitter = ColorJitter(brightness=0.25, contrast=0.25, saturation=0.25, hue=0.1)

Add a function to handle grayscale images and ensure that each input image has three color channels, regardless of whether it was originally grayscale or RGB. The function converts RGB images to array as is, and for grayscale images that have only one color channel, the function replicates the same channel three times using np.tile() before converting the image into an array.

import numpy as np


def handle_grayscale_image(image):
    np_image = np.array(image)
    if np_image.ndim == 2:
        tiled_image = np.tile(np.expand_dims(np_image, -1), 3)
        return Image.fromarray(tiled_image)
    else:
        return Image.fromarray(np_image)

Finally, combine everything in two functions that you’ll use to transform training and validation data. The two functions are similar except data augmentation is applied only to the training data.

from PIL import Image


def train_transforms(example_batch):
    images = [jitter(handle_grayscale_image(x)) for x in example_batch["image"]]
    labels = [x for x in example_batch["annotation"]]
    inputs = image_processor(images, labels)
    return inputs


def val_transforms(example_batch):
    images = [handle_grayscale_image(x) for x in example_batch["image"]]
    labels = [x for x in example_batch["annotation"]]
    inputs = image_processor(images, labels)
    return inputs

To apply the preprocessing functions over the entire dataset, use the 🤗 Datasets set_transform function:

train_ds.set_transform(train_transforms)
test_ds.set_transform(val_transforms)

Create evaluation function

Including a metric during training is helpful for evaluating your model’s performance. You can load an evaluation method with the 🤗 Evaluate library. For this task, use the mean Intersection over Union (IoU) metric (see the 🤗 Evaluate quick tour to learn more about how to load and compute a metric):

import torch
from torch import nn
import evaluate

metric = evaluate.load("mean_iou")


def compute_metrics(eval_pred):
    with torch.no_grad():
        logits, labels = eval_pred
        logits_tensor = torch.from_numpy(logits)
        logits_tensor = nn.functional.interpolate(
            logits_tensor,
            size=labels.shape[-2:],
            mode="bilinear",
            align_corners=False,
        ).argmax(dim=1)

        pred_labels = logits_tensor.detach().cpu().numpy()
        # currently using _compute instead of compute
        # see this issue for more info: https://github.com/huggingface/evaluate/pull/328#issuecomment-1286866576
        metrics = metric._compute(
            predictions=pred_labels,
            references=labels,
            num_labels=len(id2label),
            ignore_index=0,
            reduce_labels=image_processor.do_reduce_labels,
        )

        per_category_accuracy = metrics.pop("per_category_accuracy").tolist()
        per_category_iou = metrics.pop("per_category_iou").tolist()

        metrics.update({f"accuracy_{id2label[i]}": v for i, v in enumerate(per_category_accuracy)})
        metrics.update({f"iou_{id2label[i]}": v for i, v in enumerate(per_category_iou)})

        return metrics

Load a base model

Before loading a base model, let’s define a helper function to check the total number of parameters a model has, as well as how many of them are trainable.

def print_trainable_parameters(model):
    """
    Prints the number of trainable parameters in the model.
    """
    trainable_params = 0
    all_param = 0
    for _, param in model.named_parameters():
        all_param += param.numel()
        if param.requires_grad:
            trainable_params += param.numel()
    print(
        f"trainable params: {trainable_params} || all params: {all_param} || trainable%: {100 * trainable_params / all_param:.2f}"
    )

Choose a base model checkpoint. For this example, we use the SegFormer B0 variant. In addition to the checkpoint, pass the label2id and id2label dictionaries to let the AutoModelForSemanticSegmentation class know that we’re interested in a custom base model where the decoder head should be randomly initialized using the classes from the custom dataset.

from transformers import AutoModelForSemanticSegmentation, TrainingArguments, Trainer

model = AutoModelForSemanticSegmentation.from_pretrained(
    checkpoint, id2label=id2label, label2id=label2id, ignore_mismatched_sizes=True
)
print_trainable_parameters(model)

At this point you can check with the print_trainable_parameters helper function that all 100% parameters in the base model (aka model) are trainable.

Wrap the base model as a PeftModel for LoRA training

To leverage the LoRa method, you need to wrap the base model as a PeftModel. This involves two steps:

  1. Defining LoRa configuration with LoraConfig
  2. Wrapping the original model with get_peft_model() using the config defined in the step above.
from peft import LoraConfig, get_peft_model

config = LoraConfig(
    r=32,
    lora_alpha=32,
    target_modules=["query", "value"],
    lora_dropout=0.1,
    bias="lora_only",
    modules_to_save=["decode_head"],
)
lora_model = get_peft_model(model, config)
print_trainable_parameters(lora_model)

Let’s review the LoraConfig. To enable LoRA technique, we must define the target modules within LoraConfig so that PeftModel can update the necessary matrices. Specifically, we want to target the query and value matrices in the attention blocks of the base model. These matrices are identified by their respective names, “query” and “value”. Therefore, we should specify these names in the target_modules argument of LoraConfig.

After we wrap our base model model with PeftModel along with the config, we get a new model where only the LoRA parameters are trainable (so-called “update matrices”) while the pre-trained parameters are kept frozen. These include the parameters of the randomly initialized classifier parameters too. This is NOT we want when fine-tuning the base model on our custom dataset. To ensure that the classifier parameters are also trained, we specify modules_to_save. This also ensures that these modules are serialized alongside the LoRA trainable parameters when using utilities like save_pretrained() and push_to_hub().

In addition to specifying the target_modules within LoraConfig, we also need to specify the modules_to_save. When we wrap our base model with PeftModel and pass the configuration, we obtain a new model in which only the LoRA parameters are trainable, while the pre-trained parameters and the randomly initialized classifier parameters are kept frozen. However, we do want to train the classifier parameters. By specifying the modules_to_save argument, we ensure that the classifier parameters are also trainable, and they will be serialized alongside the LoRA trainable parameters when we use utility functions like save_pretrained() and push_to_hub().

Let’s review the rest of the parameters:

  • r: The dimension used by the LoRA update matrices.
  • alpha: Scaling factor.
  • bias: Specifies if the bias parameters should be trained. None denotes none of the bias parameters will be trained.

When all is configured, and the base model is wrapped, the print_trainable_parameters helper function lets us explore the number of trainable parameters. Since we’re interested in performing parameter-efficient fine-tuning, we should expect to see a lower number of trainable parameters from the lora_model in comparison to the original model which is indeed the case here.

You can also manually verify what modules are trainable in the lora_model.

for name, param in lora_model.named_parameters():
    if param.requires_grad:
        print(name, param.shape)

This confirms that only the LoRA parameters appended to the attention blocks and the decode_head parameters are trainable.

Train the model

Start by defining your training hyperparameters in TrainingArguments. You can change the values of most parameters however you prefer. Make sure to set remove_unused_columns=False, otherwise the image column will be dropped, and it’s required here. The only other required parameter is output_dir which specifies where to save your model. At the end of each epoch, the Trainer will evaluate the IoU metric and save the training checkpoint.

Note that this example is meant to walk you through the workflow when using PEFT for semantic segmentation. We didn’t perform extensive hyperparameter tuning to achieve optimal results.

model_name = checkpoint.split("/")[-1]

training_args = TrainingArguments(
    output_dir=f"{model_name}-scene-parse-150-lora",
    learning_rate=5e-4,
    num_train_epochs=50,
    per_device_train_batch_size=4,
    per_device_eval_batch_size=2,
    save_total_limit=3,
    evaluation_strategy="epoch",
    save_strategy="epoch",
    logging_steps=5,
    remove_unused_columns=False,
    push_to_hub=True,
    label_names=["labels"],
)

Pass the training arguments to Trainer along with the model, dataset, and compute_metrics function. Call train() to finetune your model.

trainer = Trainer(
    model=lora_model,
    args=training_args,
    train_dataset=train_ds,
    eval_dataset=test_ds,
    compute_metrics=compute_metrics,
)

trainer.train()

Save the model and run inference

Use the save_pretrained() method of the lora_model to save the LoRA-only parameters locally. Alternatively, use the push_to_hub() method to upload these parameters directly to the Hugging Face Hub (as shown in the Image classification using LoRA task guide).

model_id = "segformer-scene-parse-150-lora"
lora_model.save_pretrained(model_id)

We can see that the LoRA-only parameters are just 2.2 MB in size! This greatly improves the portability when using very large models.

!ls -lh {model_id}
total 2.2M
-rw-r--r-- 1 root root  369 Feb  8 03:09 adapter_config.json
-rw-r--r-- 1 root root 2.2M Feb  8 03:09 adapter_model.bin

Let’s now prepare an inference_model and run inference.

from peft import PeftConfig

config = PeftConfig.from_pretrained(model_id)
model = AutoModelForSemanticSegmentation.from_pretrained(
    checkpoint, id2label=id2label, label2id=label2id, ignore_mismatched_sizes=True
)

inference_model = PeftModel.from_pretrained(model, model_id)

Get an image:

import requests

url = "https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/semantic-seg-image.png"
image = Image.open(requests.get(url, stream=True).raw)
image
photo of a room

Preprocess the image to prepare for inference.

encoding = image_processor(image.convert("RGB"), return_tensors="pt")

Run inference with the encoded image.

with torch.no_grad():
    outputs = inference_model(pixel_values=encoding.pixel_values)
    logits = outputs.logits

upsampled_logits = nn.functional.interpolate(
    logits,
    size=image.size[::-1],
    mode="bilinear",
    align_corners=False,
)

pred_seg = upsampled_logits.argmax(dim=1)[0]

Next, visualize the results. We need a color palette for this. Here, we use ade_palette(). As it is a long array, so we don’t include it in this guide, please copy it from the TensorFlow Model Garden repository.

import matplotlib.pyplot as plt

color_seg = np.zeros((pred_seg.shape[0], pred_seg.shape[1], 3), dtype=np.uint8)
palette = np.array(ade_palette())

for label, color in enumerate(palette):
    color_seg[pred_seg == label, :] = color
color_seg = color_seg[..., ::-1]  # convert to BGR

img = np.array(image) * 0.5 + color_seg * 0.5  # plot the image with the segmentation map
img = img.astype(np.uint8)

plt.figure(figsize=(15, 10))
plt.imshow(img)
plt.show()

As you can see, the results are far from perfect, however, this example is designed to illustrate the end-to-end workflow of fine-tuning a semantic segmentation model with LoRa technique, and is not aiming to achieve state-of-the-art results. The results you see here are the same as you would get if you performed full fine-tuning on the same setup (same model variant, same dataset, same training schedule, etc.), except LoRA allows to achieve them with a fraction of total trainable parameters and in less time.

If you wish to use this example and improve the results, here are some things that you can try:

  • Increase the number of training samples.
  • Try a larger SegFormer model variant (explore available model variants on the Hugging Face Hub).
  • Try different values for the arguments available in LoraConfig.
  • Tune the learning rate and batch size.