Depth Anything Core ML Models
Depth Anything model was introduced in the paper Depth Anything: Unleashing the Power of Large-Scale Unlabeled Data by Lihe Yang et al. and first released in this repository.
Model description
Depth Anything leverages the DPT architecture with a DINOv2 backbone.
The model is trained on ~62 million images, obtaining state-of-the-art results for both relative and absolute depth estimation.
Depth Anything overview. Taken from the original paper.
Evaluation - Variants
Variant | Parameters | Size (MB) | Weight precision | Act. precision | abs-rel error | abs-rel reference |
---|---|---|---|---|---|---|
small-original (PyTorch) | 24.8M | 99.2 | Float32 | Float32 | ||
DepthAnythingSmallF32 | 24.8M | 99.0 | Float32 | Float32 | 0.0073 | small-original |
DepthAnythingSmallF16 | 24.8M | 45.8 | Float16 | Float16 | 0.0077 | small-original |
Evaluation - Inference time
The following results use the small-float16 variant.
Device | OS | Inference time (ms) | Dominant compute unit |
---|---|---|---|
iPhone 12 Pro Max | 18.0 | 31.10 | Neural Engine |
iPhone 15 Pro Max | 17.4 | 33.90 | Neural Engine |
MacBook Pro (M1 Max) | 15.0 | 32.80 | Neural Engine |
MacBook Pro (M3 Max) | 15.0 | 24.58 | Neural Engine |
Download
Install huggingface-cli
brew install huggingface-cli
To download one of the .mlpackage
folders to the models
directory:
huggingface-cli download \
--local-dir models --local-dir-use-symlinks False \
apple/coreml-depth-anything-small \
--include "DepthAnythingSmallF16.mlpackage/*"
To download everything, skip the --include
argument.
Integrate in Swift apps
The huggingface/coreml-examples
repository contains sample Swift code for coreml-depth-anything-small
and other models. See the instructions there to build the demo app, which shows how to use the model in your own Swift apps.
- Downloads last month
- 122