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Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-20 23:52:15 +09:00

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id, title, category, status, canonical_id, aliases, duplicate_of, source_trust_level, confidence_score, verification_status, tags, raw_sources, last_reinforced, github_commit, tech_stack
id title category status canonical_id aliases duplicate_of source_trust_level confidence_score verification_status tags raw_sources last_reinforced github_commit tech_stack
wiki-2026-0508-dynamic-environment-handling Dynamic Environment Handling 10_Wiki/Topics verified self
dynamic environment
AV dynamic obstacles
MOT
scene flow
motion forecasting
none A 0.92 applied
autonomous-driving
robotics
perception
motion-forecasting
mot
dynamic-objects
2026-05-10 pending
language framework
Python / C++ Apollo / Autoware / NuScenes

Dynamic Environment Handling

매 한 줄

"매 static map 의 X — 매 moving object + 매 changing scene 의 reason". 매 autonomous driving 의 critical: 매 vehicle, pedestrian, cyclist, weather, occlusion. 매 modern: 매 transformer-based motion forecasting (Waymo MotionLM, Apollo).

매 핵심

매 problem

  • Static: 매 building, lane.
  • Dynamic: 매 vehicle, pedestrian, weather, occlusion.
  • Challenge: 매 prediction + uncertainty.

매 pipeline

  1. Detection: 매 3D bbox / pointcloud cluster.
  2. Tracking (MOT): 매 ID 의 frame 의 maintain.
  3. Prediction: 매 future trajectory.
  4. Planning: 매 prediction 의 incorporate.

매 method

  • Detection: PointPillars, CenterPoint, BEVFusion.
  • MOT: SORT, DeepSORT, ByteTrack, JDE.
  • Prediction: VectorNet, MTR, MotionLM, Wayformer.
  • Joint: 매 perception + prediction unified.

매 modern AI

  • End-to-end: 매 sensor → trajectory.
  • Transformer: 매 multi-agent attention.
  • Diffusion forecasting: 매 multi-modal future.
  • Foundation model: 매 driving simulator (DriveGPT).

매 응용

  1. Autonomous driving: 매 highway + urban.
  2. Robotics: 매 mobile robot.
  3. Drone: 매 obstacle avoid.
  4. AR: 매 dynamic occlusion.
  5. Sports analytics: 매 player tracking.

💻 패턴

MOT (ByteTrack-style)

class ByteTrack:
    def __init__(self, high_thresh=0.5, low_thresh=0.1):
        self.tracks = []
        self.high = high_thresh
        self.low = low_thresh
    
    def update(self, detections):
        # 매 1. high-conf 의 match (Hungarian + IoU)
        high_dets = [d for d in detections if d.score > self.high]
        matched_high, unmatched_tracks = match_iou(self.tracks, high_dets)
        
        # 매 2. unmatched track + low-conf det 의 match (recover)
        low_dets = [d for d in detections if self.low < d.score <= self.high]
        matched_low, _ = match_iou(unmatched_tracks, low_dets)
        
        # 매 3. update + new track
        for t, d in matched_high + matched_low:
            t.update(d)
        for d in [d for d in high_dets if d not in matched]:
            self.tracks.append(Track(d))

Kalman filter (track state)

class TrackKF:
    def __init__(self, init_bbox):
        # 매 state: [x, y, vx, vy, w, h]
        self.x = np.array([*init_bbox.center, 0, 0, init_bbox.w, init_bbox.h])
        self.P = np.eye(6) * 10
        self.F = np.eye(6); self.F[0, 2] = self.F[1, 3] = 1  # 매 dt=1
        self.H = np.eye(4, 6)
        self.Q = np.eye(6) * 0.1
        self.R = np.eye(4) * 1
    
    def predict(self):
        self.x = self.F @ self.x
        self.P = self.F @ self.P @ self.F.T + self.Q
    
    def update(self, measurement):
        z = np.array([*measurement.center, measurement.w, measurement.h])
        y = z - self.H @ self.x
        S = self.H @ self.P @ self.H.T + self.R
        K = self.P @ self.H.T @ np.linalg.inv(S)
        self.x += K @ y
        self.P = (np.eye(6) - K @ self.H) @ self.P

Motion forecasting (Vector-style)

class MotionPredictor(nn.Module):
    """매 simplified VectorNet."""
    def __init__(self, hidden=64):
        super().__init__()
        self.poly_enc = nn.Linear(6, hidden)  # 매 polyline encoder
        self.attn = nn.MultiheadAttention(hidden, 4)
        self.decoder = nn.Linear(hidden, 60)  # 매 30 timesteps × (x,y)
    
    def forward(self, polylines):
        # 매 polylines: [B, N, T, 6] (x, y, vx, vy, type, idx)
        B, N, T, _ = polylines.shape
        feats = self.poly_enc(polylines).max(dim=2).values  # 매 [B, N, hidden]
        attn_out, _ = self.attn(feats, feats, feats)
        ego_feat = attn_out[:, 0]  # 매 ego 의 first
        return self.decoder(ego_feat).reshape(B, 30, 2)

Multi-modal prediction (Gaussian mixture)

class MultiModalPredictor(nn.Module):
    def __init__(self, K=6, T=30):
        super().__init__()
        self.K = K
        self.head_mean = nn.Linear(64, K * T * 2)
        self.head_var = nn.Linear(64, K * T * 2)
        self.head_pi = nn.Linear(64, K)
    
    def forward(self, feat):
        means = self.head_mean(feat).reshape(-1, self.K, 30, 2)
        vars = self.head_var(feat).exp().reshape(-1, self.K, 30, 2)
        pi = self.head_pi(feat).softmax(-1)
        return means, vars, pi

Risk-aware planning

def safe_speed(predicted_trajectories, ego_path, dt=0.1):
    """매 prediction 의 risk 의 minimum 의 follow."""
    min_safe_v = float('inf')
    for t in range(30):
        for traj in predicted_trajectories:
            if intersects(ego_path[t], traj[t], radius=2.0):
                tt = t * dt
                if tt > 0:
                    min_safe_v = min(min_safe_v, ego_path[t].dist / tt)
    return min_safe_v

Occlusion handling

def handle_occlusion(tracks, current_dets, max_age=10):
    for t in tracks:
        if not t.matched:
            t.age += 1
            if t.age > max_age:
                t.delete()
            else:
                # 매 predict-only mode
                t.kf.predict()
                t.is_visible = False
    return [t for t in tracks if not t.deleted]

Weather degradation handling

def adapt_to_weather(sensor_data, weather):
    if weather == 'rain':
        # 매 lidar noise ↑ → 매 detection threshold ↑
        return {'detection_threshold': 0.7, 'fusion_weight_camera': 0.3}
    elif weather == 'fog':
        # 매 camera 의 unreliable
        return {'detection_threshold': 0.6, 'fusion_weight_camera': 0.1}
    return {'detection_threshold': 0.5, 'fusion_weight_camera': 0.5}

CARLA simulation (test rig)

import carla
client = carla.Client('localhost', 2000)
world = client.get_world()
settings = world.get_settings()
settings.synchronous_mode = True
settings.fixed_delta_seconds = 0.05
world.apply_settings(settings)

# 매 spawn dynamic actors
for spawn_point in world.get_map().get_spawn_points()[:50]:
    bp = world.get_blueprint_library().find('vehicle.tesla.model3')
    actor = world.try_spawn_actor(bp, spawn_point)
    if actor: actor.set_autopilot(True)

매 결정 기준

상황 Approach
Highway Long-horizon (5s) prediction
Urban Multi-agent + intent
Pedestrian Short-horizon, multi-modal
Heavy occlusion Long max_age, predict-only
Adverse weather Sensor fusion reweight
Real-time <100ms latency budget

기본값: 매 BEV detection + ByteTrack + transformer multi-modal predict + risk-aware plan.

🔗 Graph

🤖 LLM 활용

언제: 매 AV planning. 매 robot mobile. 매 dynamic scene. 언제 X: 매 static map only. 매 stationary robot.

안티패턴

  • Single-modal predict: 매 future 의 multi modes 의 ignore.
  • Track without filter: 매 noise.
  • Fixed weather config: 매 degradation 의 adapt X.
  • Detection without ID: 매 association 의 lose.
  • No occlusion handling: 매 ghost track.

🧪 검증 / 중복

  • Verified (NuScenes, Waymo Open, MOTChallenge).
  • 신뢰도 A.

🕓 Changelog

날짜 변경
2026-04-20 Auto-reinforced
2026-05-08 Phase 1
2026-05-10 Manual cleanup — MOT + prediction + 매 ByteTrack / KF / VectorNet / risk plan code