mirror of
				https://github.com/blakeblackshear/frigate.git
				synced 2025-10-27 10:52:11 +01:00 
			
		
		
		
	* fix i18n keys * hide disable from context menu for viewers * Fix auto live check for default dashboard and camera groups Disabling the Automatic Live View switch in Settings should prevent streaming from occurring. Overriding any settings in a camera group will override the global setting. The check here incorrectly always returned false instead of undefined. * clarify hardware accelerated enrichments * clarify * add note about detect stream to face rec docs * add note about low end Dahuas for autotracking * Catch invalid face box / image * Video tab tweaks With the changes in https://github.com/blakeblackshear/frigate/pull/18220, the video tab in the Tracked Object Details pane now correctly trims the in-browser HLS video. Because of keyframes and record/detect stream differences, we can manually subtract a couple of seconds from the event start_time to ensure the first few frames aren't cut off from the video * Clarify * Don't use Migraphx by default * Provide better support for running embeddings on GPU * correctly join cameras * Adjust blur confidence reduction --------- Co-authored-by: Nicolas Mowen <nickmowen213@gmail.com>
		
			
				
	
	
		
			367 lines
		
	
	
		
			11 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			367 lines
		
	
	
		
			11 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
"""Model Utils"""
 | 
						|
 | 
						|
import logging
 | 
						|
import os
 | 
						|
from typing import Any
 | 
						|
 | 
						|
import cv2
 | 
						|
import numpy as np
 | 
						|
import onnxruntime as ort
 | 
						|
 | 
						|
from frigate.const import MODEL_CACHE_DIR
 | 
						|
 | 
						|
logger = logging.getLogger(__name__)
 | 
						|
 | 
						|
 | 
						|
### Post Processing
 | 
						|
 | 
						|
 | 
						|
def post_process_dfine(
 | 
						|
    tensor_output: np.ndarray, width: int, height: int
 | 
						|
) -> np.ndarray:
 | 
						|
    class_ids = tensor_output[0][tensor_output[2] > 0.4]
 | 
						|
    boxes = tensor_output[1][tensor_output[2] > 0.4]
 | 
						|
    scores = tensor_output[2][tensor_output[2] > 0.4]
 | 
						|
 | 
						|
    input_shape = np.array([height, width, height, width])
 | 
						|
    boxes = np.divide(boxes, input_shape, dtype=np.float32)
 | 
						|
    indices = cv2.dnn.NMSBoxes(boxes, scores, score_threshold=0.4, nms_threshold=0.4)
 | 
						|
    detections = np.zeros((20, 6), np.float32)
 | 
						|
 | 
						|
    for i, (bbox, confidence, class_id) in enumerate(
 | 
						|
        zip(boxes[indices], scores[indices], class_ids[indices])
 | 
						|
    ):
 | 
						|
        if i == 20:
 | 
						|
            break
 | 
						|
 | 
						|
        detections[i] = [
 | 
						|
            class_id,
 | 
						|
            confidence,
 | 
						|
            bbox[1],
 | 
						|
            bbox[0],
 | 
						|
            bbox[3],
 | 
						|
            bbox[2],
 | 
						|
        ]
 | 
						|
 | 
						|
    return detections
 | 
						|
 | 
						|
 | 
						|
def post_process_rfdetr(tensor_output: list[np.ndarray, np.ndarray]) -> np.ndarray:
 | 
						|
    boxes = tensor_output[0]
 | 
						|
    raw_scores = tensor_output[1]
 | 
						|
 | 
						|
    # apply soft max to scores
 | 
						|
    exp = np.exp(raw_scores - np.max(raw_scores, axis=-1, keepdims=True))
 | 
						|
    all_scores = exp / np.sum(exp, axis=-1, keepdims=True)
 | 
						|
 | 
						|
    # get highest scoring class from every detection
 | 
						|
    scores = np.max(all_scores[0, :, 1:], axis=-1)
 | 
						|
    labels = np.argmax(all_scores[0, :, 1:], axis=-1)
 | 
						|
 | 
						|
    idxs = scores > 0.4
 | 
						|
    filtered_boxes = boxes[0, idxs]
 | 
						|
    filtered_scores = scores[idxs]
 | 
						|
    filtered_labels = labels[idxs]
 | 
						|
 | 
						|
    # convert boxes from [x_center, y_center, width, height]
 | 
						|
    x_center, y_center, w, h = (
 | 
						|
        filtered_boxes[:, 0],
 | 
						|
        filtered_boxes[:, 1],
 | 
						|
        filtered_boxes[:, 2],
 | 
						|
        filtered_boxes[:, 3],
 | 
						|
    )
 | 
						|
    x_min = x_center - w / 2
 | 
						|
    y_min = y_center - h / 2
 | 
						|
    x_max = x_center + w / 2
 | 
						|
    y_max = y_center + h / 2
 | 
						|
    filtered_boxes = np.stack([x_min, y_min, x_max, y_max], axis=-1)
 | 
						|
 | 
						|
    # apply nms
 | 
						|
    indices = cv2.dnn.NMSBoxes(
 | 
						|
        filtered_boxes, filtered_scores, score_threshold=0.4, nms_threshold=0.4
 | 
						|
    )
 | 
						|
    detections = np.zeros((20, 6), np.float32)
 | 
						|
 | 
						|
    for i, (bbox, confidence, class_id) in enumerate(
 | 
						|
        zip(filtered_boxes[indices], filtered_scores[indices], filtered_labels[indices])
 | 
						|
    ):
 | 
						|
        if i == 20:
 | 
						|
            break
 | 
						|
 | 
						|
        detections[i] = [
 | 
						|
            class_id,
 | 
						|
            confidence,
 | 
						|
            bbox[1],
 | 
						|
            bbox[0],
 | 
						|
            bbox[3],
 | 
						|
            bbox[2],
 | 
						|
        ]
 | 
						|
 | 
						|
    return detections
 | 
						|
 | 
						|
 | 
						|
def __post_process_multipart_yolo(
 | 
						|
    output_list,
 | 
						|
    width,
 | 
						|
    height,
 | 
						|
):
 | 
						|
    anchors = [
 | 
						|
        [(12, 16), (19, 36), (40, 28)],
 | 
						|
        [(36, 75), (76, 55), (72, 146)],
 | 
						|
        [(142, 110), (192, 243), (459, 401)],
 | 
						|
    ]
 | 
						|
 | 
						|
    stride_map = {0: 8, 1: 16, 2: 32}
 | 
						|
 | 
						|
    all_boxes = []
 | 
						|
    all_scores = []
 | 
						|
    all_class_ids = []
 | 
						|
 | 
						|
    for i, output in enumerate(output_list):
 | 
						|
        bs, _, ny, nx = output.shape
 | 
						|
        stride = stride_map[i]
 | 
						|
        anchor_set = anchors[i]
 | 
						|
 | 
						|
        num_anchors = len(anchor_set)
 | 
						|
        output = output.reshape(bs, num_anchors, 85, ny, nx)
 | 
						|
        output = output.transpose(0, 1, 3, 4, 2)
 | 
						|
        output = output[0]
 | 
						|
 | 
						|
        for a_idx, (anchor_w, anchor_h) in enumerate(anchor_set):
 | 
						|
            for y in range(ny):
 | 
						|
                for x in range(nx):
 | 
						|
                    pred = output[a_idx, y, x]
 | 
						|
                    class_probs = pred[5:]
 | 
						|
                    class_id = np.argmax(class_probs)
 | 
						|
                    class_conf = class_probs[class_id]
 | 
						|
                    conf = class_conf * pred[4]
 | 
						|
 | 
						|
                    if conf < 0.4:
 | 
						|
                        continue
 | 
						|
 | 
						|
                    dx = pred[0]
 | 
						|
                    dy = pred[1]
 | 
						|
                    dw = pred[2]
 | 
						|
                    dh = pred[3]
 | 
						|
 | 
						|
                    bx = ((dx * 2.0 - 0.5) + x) * stride
 | 
						|
                    by = ((dy * 2.0 - 0.5) + y) * stride
 | 
						|
                    bw = ((dw * 2.0) ** 2) * anchor_w
 | 
						|
                    bh = ((dh * 2.0) ** 2) * anchor_h
 | 
						|
 | 
						|
                    x1 = max(0, bx - bw / 2)
 | 
						|
                    y1 = max(0, by - bh / 2)
 | 
						|
                    x2 = min(width, bx + bw / 2)
 | 
						|
                    y2 = min(height, by + bh / 2)
 | 
						|
 | 
						|
                    all_boxes.append([x1, y1, x2, y2])
 | 
						|
                    all_scores.append(conf)
 | 
						|
                    all_class_ids.append(class_id)
 | 
						|
 | 
						|
    indices = cv2.dnn.NMSBoxes(
 | 
						|
        bboxes=all_boxes,
 | 
						|
        scores=all_scores,
 | 
						|
        score_threshold=0.4,
 | 
						|
        nms_threshold=0.4,
 | 
						|
    )
 | 
						|
 | 
						|
    results = np.zeros((20, 6), np.float32)
 | 
						|
 | 
						|
    if len(indices) > 0:
 | 
						|
        for i, idx in enumerate(indices.flatten()[:20]):
 | 
						|
            class_id = all_class_ids[idx]
 | 
						|
            conf = all_scores[idx]
 | 
						|
            x1, y1, x2, y2 = all_boxes[idx]
 | 
						|
            results[i] = [
 | 
						|
                class_id,
 | 
						|
                conf,
 | 
						|
                y1 / height,
 | 
						|
                x1 / width,
 | 
						|
                y2 / height,
 | 
						|
                x2 / width,
 | 
						|
            ]
 | 
						|
 | 
						|
    return results
 | 
						|
 | 
						|
 | 
						|
def __post_process_nms_yolo(predictions: np.ndarray, width, height) -> np.ndarray:
 | 
						|
    predictions = np.squeeze(predictions)
 | 
						|
 | 
						|
    # transpose the output so it has order (inferences, class_ids)
 | 
						|
    if predictions.shape[0] < predictions.shape[1]:
 | 
						|
        predictions = predictions.T
 | 
						|
 | 
						|
    scores = np.max(predictions[:, 4:], axis=1)
 | 
						|
    predictions = predictions[scores > 0.4, :]
 | 
						|
    scores = scores[scores > 0.4]
 | 
						|
    class_ids = np.argmax(predictions[:, 4:], axis=1)
 | 
						|
 | 
						|
    # Rescale box
 | 
						|
    boxes = predictions[:, :4]
 | 
						|
    boxes_xyxy = np.ones_like(boxes)
 | 
						|
    boxes_xyxy[:, 0] = boxes[:, 0] - boxes[:, 2] / 2
 | 
						|
    boxes_xyxy[:, 1] = boxes[:, 1] - boxes[:, 3] / 2
 | 
						|
    boxes_xyxy[:, 2] = boxes[:, 0] + boxes[:, 2] / 2
 | 
						|
    boxes_xyxy[:, 3] = boxes[:, 1] + boxes[:, 3] / 2
 | 
						|
    boxes = boxes_xyxy
 | 
						|
 | 
						|
    # run NMS
 | 
						|
    indices = cv2.dnn.NMSBoxes(boxes, scores, score_threshold=0.4, nms_threshold=0.4)
 | 
						|
    detections = np.zeros((20, 6), np.float32)
 | 
						|
    for i, (bbox, confidence, class_id) in enumerate(
 | 
						|
        zip(boxes[indices], scores[indices], class_ids[indices])
 | 
						|
    ):
 | 
						|
        if i == 20:
 | 
						|
            break
 | 
						|
 | 
						|
        detections[i] = [
 | 
						|
            class_id,
 | 
						|
            confidence,
 | 
						|
            bbox[1] / height,
 | 
						|
            bbox[0] / width,
 | 
						|
            bbox[3] / height,
 | 
						|
            bbox[2] / width,
 | 
						|
        ]
 | 
						|
 | 
						|
    return detections
 | 
						|
 | 
						|
 | 
						|
def post_process_yolo(output: list[np.ndarray], width: int, height: int) -> np.ndarray:
 | 
						|
    if len(output) > 1:
 | 
						|
        return __post_process_multipart_yolo(output, width, height)
 | 
						|
    else:
 | 
						|
        return __post_process_nms_yolo(output[0], width, height)
 | 
						|
 | 
						|
 | 
						|
def post_process_yolox(
 | 
						|
    predictions: np.ndarray,
 | 
						|
    width: int,
 | 
						|
    height: int,
 | 
						|
    grids: np.ndarray,
 | 
						|
    expanded_strides: np.ndarray,
 | 
						|
) -> np.ndarray:
 | 
						|
    predictions[..., :2] = (predictions[..., :2] + grids) * expanded_strides
 | 
						|
    predictions[..., 2:4] = np.exp(predictions[..., 2:4]) * expanded_strides
 | 
						|
 | 
						|
    # process organized predictions
 | 
						|
    predictions = predictions[0]
 | 
						|
    boxes = predictions[:, :4]
 | 
						|
    scores = predictions[:, 4:5] * predictions[:, 5:]
 | 
						|
 | 
						|
    boxes_xyxy = np.ones_like(boxes)
 | 
						|
    boxes_xyxy[:, 0] = boxes[:, 0] - boxes[:, 2] / 2
 | 
						|
    boxes_xyxy[:, 1] = boxes[:, 1] - boxes[:, 3] / 2
 | 
						|
    boxes_xyxy[:, 2] = boxes[:, 0] + boxes[:, 2] / 2
 | 
						|
    boxes_xyxy[:, 3] = boxes[:, 1] + boxes[:, 3] / 2
 | 
						|
 | 
						|
    cls_inds = scores.argmax(1)
 | 
						|
    scores = scores[np.arange(len(cls_inds)), cls_inds]
 | 
						|
 | 
						|
    indices = cv2.dnn.NMSBoxes(
 | 
						|
        boxes_xyxy, scores, score_threshold=0.4, nms_threshold=0.4
 | 
						|
    )
 | 
						|
 | 
						|
    detections = np.zeros((20, 6), np.float32)
 | 
						|
    for i, (bbox, confidence, class_id) in enumerate(
 | 
						|
        zip(boxes_xyxy[indices], scores[indices], cls_inds[indices])
 | 
						|
    ):
 | 
						|
        if i == 20:
 | 
						|
            break
 | 
						|
 | 
						|
        detections[i] = [
 | 
						|
            class_id,
 | 
						|
            confidence,
 | 
						|
            bbox[1] / height,
 | 
						|
            bbox[0] / width,
 | 
						|
            bbox[3] / height,
 | 
						|
            bbox[2] / width,
 | 
						|
        ]
 | 
						|
 | 
						|
    return detections
 | 
						|
 | 
						|
 | 
						|
### ONNX Utilities
 | 
						|
 | 
						|
 | 
						|
def get_ort_providers(
 | 
						|
    force_cpu: bool = False, device: str = "AUTO", requires_fp16: bool = False
 | 
						|
) -> tuple[list[str], list[dict[str, Any]]]:
 | 
						|
    if force_cpu:
 | 
						|
        return (
 | 
						|
            ["CPUExecutionProvider"],
 | 
						|
            [
 | 
						|
                {
 | 
						|
                    "enable_cpu_mem_arena": False,
 | 
						|
                }
 | 
						|
            ],
 | 
						|
        )
 | 
						|
 | 
						|
    providers = []
 | 
						|
    options = []
 | 
						|
 | 
						|
    for provider in ort.get_available_providers():
 | 
						|
        if provider == "CUDAExecutionProvider":
 | 
						|
            device_id = 0 if not device.isdigit() else int(device)
 | 
						|
            providers.append(provider)
 | 
						|
            options.append(
 | 
						|
                {
 | 
						|
                    "arena_extend_strategy": "kSameAsRequested",
 | 
						|
                    "device_id": device_id,
 | 
						|
                }
 | 
						|
            )
 | 
						|
        elif provider == "TensorrtExecutionProvider":
 | 
						|
            # TensorrtExecutionProvider uses too much memory without options to control it
 | 
						|
            # so it is not enabled by default
 | 
						|
            if device == "Tensorrt":
 | 
						|
                os.makedirs(
 | 
						|
                    os.path.join(MODEL_CACHE_DIR, "tensorrt/ort/trt-engines"),
 | 
						|
                    exist_ok=True,
 | 
						|
                )
 | 
						|
                device_id = 0 if not device.isdigit() else int(device)
 | 
						|
                providers.append(provider)
 | 
						|
                options.append(
 | 
						|
                    {
 | 
						|
                        "device_id": device_id,
 | 
						|
                        "trt_fp16_enable": requires_fp16
 | 
						|
                        and os.environ.get("USE_FP_16", "True") != "False",
 | 
						|
                        "trt_timing_cache_enable": True,
 | 
						|
                        "trt_engine_cache_enable": True,
 | 
						|
                        "trt_timing_cache_path": os.path.join(
 | 
						|
                            MODEL_CACHE_DIR, "tensorrt/ort"
 | 
						|
                        ),
 | 
						|
                        "trt_engine_cache_path": os.path.join(
 | 
						|
                            MODEL_CACHE_DIR, "tensorrt/ort/trt-engines"
 | 
						|
                        ),
 | 
						|
                    }
 | 
						|
                )
 | 
						|
            else:
 | 
						|
                continue
 | 
						|
        elif provider == "OpenVINOExecutionProvider":
 | 
						|
            os.makedirs(os.path.join(MODEL_CACHE_DIR, "openvino/ort"), exist_ok=True)
 | 
						|
            providers.append(provider)
 | 
						|
            options.append(
 | 
						|
                {
 | 
						|
                    "cache_dir": os.path.join(MODEL_CACHE_DIR, "openvino/ort"),
 | 
						|
                    "device_type": device,
 | 
						|
                }
 | 
						|
            )
 | 
						|
        elif provider == "MIGraphXExecutionProvider":
 | 
						|
            # MIGraphX uses more CPU than ROCM, while also being the same speed
 | 
						|
            if device == "MIGraphX":
 | 
						|
                providers.append(provider)
 | 
						|
                options.append({})
 | 
						|
            else:
 | 
						|
                continue
 | 
						|
        elif provider == "CPUExecutionProvider":
 | 
						|
            providers.append(provider)
 | 
						|
            options.append(
 | 
						|
                {
 | 
						|
                    "enable_cpu_mem_arena": False,
 | 
						|
                }
 | 
						|
            )
 | 
						|
        else:
 | 
						|
            providers.append(provider)
 | 
						|
            options.append({})
 | 
						|
 | 
						|
    return (providers, options)
 |