Skip to main content

Toposync first-party extension: task-oriented vision operators.

Project description

Toposync Vision extension

First-party extension focused on public task-oriented vision operators for the Pipelines runtime.

What it provides

  • vision.detect
  • vision.track
  • vision.crop_objects
  • vision.segment_instances
  • vision.pose_estimate (skeleton only; not launched yet)

The public surface is task-based, not vendor-based. The official first-party runtime is ONNX Runtime, with CPU as the default execution path.

Dependencies

  • The default toposync application bundle includes the first-party ONNX Runtime CPU stack.
  • The GPU-oriented first-party bundles are published separately:
    • toposync-vision-cuda
    • toposync-vision-directml
  • The official extension package now also includes the first-party tracker stack:
    • simple_iou_kalman
    • norfair

Notes

  • vision.detect resolves ModelManifest entries and builds an ONNX Runtime backend automatically when runtime=onnxruntime.
  • By default, the ONNX Runtime backend prefers CPUExecutionProvider. Optional acceleration is opt-in via the toposync-vision-cuda / toposync-vision-directml bundles or TOPOSYNC_VISION_ONNXRUNTIME_PROVIDERS.
  • Manifest files can be loaded from TOPOSYNC_VISION_MANIFESTS_DIR or TOPOSYNC_VISION_MANIFEST_PATHS.
  • Custom manifests imported from the UI are persisted under .toposync-data/vision-manifests/ for the selected processing server.
  • Built-in first-party manifests ship inside the wheel, but their ONNX weights do not. When no checkout-local artifact exists, official model ids resolve to TOPOSYNC_DATA_DIR/vision-models/... (or .toposync-data/vision-models/... by default).
  • The extension now ships a built-in RTMDet detection shortlist in extensions/vision/manifests/:
    • rtmdet_det_tiny
    • rtmdet_det_small
    • rtmdet_det_medium
  • The extension now also ships a built-in RF-DETR detection shortlist in extensions/vision/manifests/:
    • rfdetr_det_nano
    • rfdetr_det_small
    • rfdetr_det_medium
  • In a source checkout, existing local artifacts under extensions/vision/models/... are still honored.
  • In installed environments, official artifacts belong under the managed model store in TOPOSYNC_DATA_DIR/vision-models/... and are intentionally not bundled in the published package.
  • The validated manual provisioning flow is documented in docs/VISION_MODEL_PROVISIONING.md.
  • The initial assisted-provisioning foundation for RTMDet detection is already exposed in catalog metadata:
    • upstream checkpoint/config/metafile/paper links
    • planned local builder backend
    • planned supported platforms
    • explicit-consent requirement
  • The UI can also trigger installation for models that have an admin-configured source. Supported source env vars are:
    • TOPOSYNC_VISION_MODEL_SOURCE_<MODEL_ID>
    • TOPOSYNC_VISION_MODEL_URL_<MODEL_ID>
    • TOPOSYNC_VISION_MODEL_PATH_<MODEL_ID>
    • TOPOSYNC_VISION_OFFICIAL_MODEL_SOURCE_DIR
    • TOPOSYNC_VISION_OFFICIAL_MODEL_BASE_URL
  • RTMDet detection now also has an experimental assisted local build path:
    • Linux only in this phase
    • requires a local container runtime (docker or podman) on the processing server
    • still downloads the upstream checkpoint directly on that machine
    • still validates the exported end2end.onnx against the manifest checksum
    • now records provenance per job, including actor, accepted upstream sources, builder metadata, and final ONNX sha256
    • still keeps manual upload as the stable fallback path
    • can be started from the model recovery card or the Processing Servers screen
  • RF-DETR detection now also has an experimental assisted local build path:
    • supports linux, darwin, and windows hosts in this phase
    • uses a host Python builder (rfdetr[onnx]) instead of MMDeploy
    • downloads the upstream checkpoint directly on that machine before exporting the ONNX locally
    • keeps manual ONNX upload available as the stable fallback path
    • is prioritized in the operator UI when nothing is installed and the local builder is actually available on that machine
  • Remote download sources are only enabled when the manifest explicitly allows redistribution. The current built-in RTMDet/RTMDet-Ins manifests do not, so the safe first-party flow is local admin-managed copy.
  • Product policy: RTMDet and RTMDet-Ins stay on guided_upload for now. RF-DETR is available only through assisted local build in this phase; it is not mirrored, bundled, or redistributed by TopoSync.
  • Product policy: Ultralytics/YOLO is not part of the official first-party vision runtime path.
  • The extension now also ships a built-in RTMDet-Ins segmentation shortlist:
    • rtmdet_ins_tiny
    • rtmdet_ins_small
    • rtmdet_ins_medium
  • RTMDet manifests use the dedicated mmdet_rtmdet parser, letterbox preprocessing, and COCO-80 labels.
  • RF-DETR manifests use the dedicated rfdetr_detr parser and the official DETR-style dets + labels ONNX outputs.
  • RTMDet-Ins manifests use the dedicated mmdet_rtmdet_ins parser and produce real binary mask artifacts.
  • The processing server status now exposes:
    • heuristic hardware recommendations
    • runtime upgrade suggestions for CUDA / DirectML bundles
    • a per-task model catalog with availability (available, manifest_only, incompatible)
    • installation capability and progress for models that can be fetched/copied automatically
    • badges such as recommended, fastest, best_quality, edge
  • vision.detect can emit finite per-detection events (emit_mode="events"), filter the stream to packets that contain detections (emit_mode="filter"), or keep every frame annotated (emit_mode="annotate").
  • vision.track is now first-party and detector-agnostic: it consumes payload["vision"]["detections"].
  • Every TrackedObject now carries camera_id, and can optionally carry world_anchor plus appearance_embedding_artifact_name for future multi-camera association work.
  • vision.segment_instances writes payload["vision"]["segmentations"], attaches mask artifacts when enabled, and exposes the top mask as the semantic image key mask.
  • vision.pose_estimate already reserves the public operator id, config schema, packet contract, and task=pose registry path so future pose models can land without breaking the architecture.
  • Tracking contracts already carry optional keypoints, so future pose-aware trackers do not require a structural rewrite.
  • ModelManifest now also accepts optional capabilities such as reid, so future re-identification models can be cataloged without changing the registry shape.
  • The pipeline editor now chooses models by task, not framework/vendor id. Basic setup is guided for common users, while advanced details expose runtime/model internals and custom manifest import when needed.
  • The first-party tracking backends are:
    • simple_iou_kalman
    • norfair
  • vision.track supports:
    • emit_mode="events" for split-stream lifecycle packets per object
    • emit_mode="annotate" for frame passthrough with payload["vision"]["tracks"]
  • vision.detect events are short OPEN/CLOSE notifications; use vision.track when you need temporal identity, movement, and long-lived per-object lifecycle.
  • vision.crop_objects crops the bbox from a single object lifecycle packet and preserves event/tracking identifiers. It is not instance segmentation.

Future runtime compatibility

  • Pipeline configs must stay task-oriented and model-oriented. Do not add runtime, device, delegate, or vendor-specific toggles such as use_coral to vision.detect, vision.classify_image, or related operators.
  • New inference stacks should be introduced as optional runtime backends plus ModelManifest entries. The manifest owns runtime, artifact_format, input.dtype, hardware accelerators, acquisition metadata, and provenance.
  • Do not reuse an existing model_id for a materially different artifact/runtime. For example, an Edge TPU/TFLite artifact should get its own model id rather than replacing an ONNX model id.
  • Runtime-specific upload, build, and install flows should remain disabled with clear diagnostics until the backend and artifact validation are implemented.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

toposync_ext_vision-0.1.21.tar.gz (86.2 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

toposync_ext_vision-0.1.21-py3-none-any.whl (121.7 kB view details)

Uploaded Python 3

File details

Details for the file toposync_ext_vision-0.1.21.tar.gz.

File metadata

File hashes

Hashes for toposync_ext_vision-0.1.21.tar.gz
Algorithm Hash digest
SHA256 b1b1997b16899b5e1d3bbaf9e94447ed450d92dd54a17c441c9fa2d62bfdec00
MD5 54cde4616ce903c5d49ca72d9295da50
BLAKE2b-256 ae08ab3bb321e171b6f159e0f36384209ce2cf222e88bdc9df7512b184d62889

See more details on using hashes here.

File details

Details for the file toposync_ext_vision-0.1.21-py3-none-any.whl.

File metadata

File hashes

Hashes for toposync_ext_vision-0.1.21-py3-none-any.whl
Algorithm Hash digest
SHA256 00545814d73a2eb008d7cd037bb56b83458d849544e1707fab06802a00a1a6c2
MD5 3040daf8fc92b1e7e34666f814e662bc
BLAKE2b-256 640c8fdc9b554bae62a1dad34a0e53bf0ebe90f3c0c0b7bedbe0ed07e9e2bf8a

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page