Fixed PSA import resampling logic
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@@ -34,6 +34,7 @@ if 'bpy' in locals():
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importlib.reload(psa_reader)
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importlib.reload(psa_writer)
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importlib.reload(psa_builder)
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importlib.reload(psa_importer)
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importlib.reload(psa_export_properties)
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importlib.reload(psa_export_operators)
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importlib.reload(psa_export_ui)
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@@ -1,4 +1,3 @@
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import math
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import typing
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from typing import List, Optional
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@@ -81,7 +80,7 @@ def _get_armature_bone_index_for_psa_bone(psa_bone_name: str, armature_bone_name
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return None
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def _resample_sequence_data_matrix(sequence_data_matrix: np.ndarray, target_frame_count: int):
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def _resample_sequence_data_matrix(sequence_data_matrix: np.ndarray, time_step: float = 1.0) -> np.ndarray:
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'''
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Resamples the sequence data matrix to the target frame count.
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@param sequence_data_matrix: FxBx7 matrix where F is the number of frames, B is the number of bones, and X is the
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@@ -89,38 +88,40 @@ def _resample_sequence_data_matrix(sequence_data_matrix: np.ndarray, target_fram
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@param target_frame_count: The number of frames to resample to.
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@return: The resampled sequence data matrix, or sequence_data_matrix if no resampling is necessary.
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'''
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def get_sample_times(source_frame_count: int, target_frame_count: int) -> typing.Iterable[float]:
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def get_sample_times(source_frame_count: int, time_step: float) -> typing.Iterable[float]:
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# TODO: for correctness, we should also emit the target frame time as well (because the last frame can be a
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# fractional frame).
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time = 0.0
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time_step = source_frame_count / target_frame_count
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while time <= target_frame_count - 1:
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while time < source_frame_count - 1:
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yield time
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time += time_step
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yield 1.0
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yield source_frame_count - 1
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source_frame_count, bone_count = sequence_data_matrix.shape[:1]
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if target_frame_count == source_frame_count:
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if time_step == 1.0:
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# No resampling is necessary.
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return sequence_data_matrix
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source_frame_count, bone_count = sequence_data_matrix.shape[:2]
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sample_times = list(get_sample_times(source_frame_count, time_step))
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target_frame_count = len(sample_times)
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resampled_sequence_data_matrix = np.zeros((target_frame_count, bone_count, 7), dtype=float)
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sample_times = get_sample_times(source_frame_count, target_frame_count)
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for frame_index, sample_time in enumerate(sample_times):
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for sample_index, sample_time in enumerate(sample_times):
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frame_index = int(sample_time)
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if sample_time % 1.0 == 0.0:
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# Sample time has no fractional part, so just copy the frame.
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resampled_sequence_data_matrix[frame_index, :, :] = sequence_data_matrix[int(sample_time), :, :]
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resampled_sequence_data_matrix[sample_index, :, :] = sequence_data_matrix[frame_index, :, :]
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else:
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# Sample time has a fractional part, so interpolate between two frames.
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next_frame_index = frame_index + 1
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for bone_index in range(bone_count):
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frame_index = int(sample_time)
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source_frame_1_data = sequence_data_matrix[frame_index, bone_index, :]
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source_frame_2_data = sequence_data_matrix[frame_index + 1, bone_index, :]
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source_frame_2_data = sequence_data_matrix[next_frame_index, bone_index, :]
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factor = sample_time - frame_index
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q = Quaternion((source_frame_1_data[:4])).slerp(Quaternion((source_frame_2_data[:4])), factor)
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q.normalize()
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l = Vector(source_frame_1_data[4:]).lerp(Vector(source_frame_2_data[4:]), factor)
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resampled_sequence_data_matrix[frame_index, bone_index, :] = q.w, q.x, q.y, q.z, l.x, l.y, l.z
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resampled_sequence_data_matrix[sample_index, bone_index, :] = q.w, q.x, q.y, q.z, l.x, l.y, l.z
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return resampled_sequence_data_matrix
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@@ -268,18 +269,16 @@ def import_psa(context: Context, psa_reader: PsaReader, armature_object: Object,
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sequence_data_matrix[frame_index, bone_index] = _calculate_fcurve_data(import_bone, key_data)
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# Resample the sequence data to the target FPS.
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# TODO: target frame count can be fractional.
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target_frame_count = math.ceil(sequence.frame_count * (target_fps / sequence.fps))
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# If the target frame count is the same as the source frame count, this will be a no-op.
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resampled_sequence_data_matrix = _resample_sequence_data_matrix(sequence_data_matrix,
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time_step=sequence.fps / target_fps)
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# Write the keyframes out.
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# Note that the f-curve data consists of alternating time and value data.
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target_frame_count = resampled_sequence_data_matrix.shape[0]
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fcurve_data = np.zeros(2 * target_frame_count, dtype=float)
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fcurve_data[0::2] = range(0, target_frame_count)
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# Resample the sequence data matrix to the target frame count.
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# If the target frame count is the same as the source frame count, this will be a no-op.
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resampled_sequence_data_matrix = _resample_sequence_data_matrix(sequence_data_matrix, target_frame_count)
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for bone_index, import_bone in enumerate(import_bones):
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if import_bone is None:
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continue
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